/usr/lib/python3/dist-packages/matplotlib/axes/_axes.py is in python3-matplotlib 2.0.0+dfsg1-2.
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unicode_literals)
import six
from six.moves import reduce, xrange, zip, zip_longest
import itertools
import math
import warnings
import numpy as np
from numpy import ma
import matplotlib
from matplotlib import unpack_labeled_data
import matplotlib.cbook as cbook
from matplotlib.cbook import (mplDeprecation, STEP_LOOKUP_MAP,
iterable, is_string_like,
safe_first_element)
import matplotlib.collections as mcoll
import matplotlib.colors as mcolors
import matplotlib.contour as mcontour
import matplotlib.dates as _ # <-registers a date unit converter
from matplotlib import docstring
import matplotlib.image as mimage
import matplotlib.legend as mlegend
import matplotlib.lines as mlines
import matplotlib.markers as mmarkers
import matplotlib.mlab as mlab
import matplotlib.path as mpath
import matplotlib.patches as mpatches
import matplotlib.quiver as mquiver
import matplotlib.stackplot as mstack
import matplotlib.streamplot as mstream
import matplotlib.table as mtable
import matplotlib.text as mtext
import matplotlib.ticker as mticker
import matplotlib.transforms as mtransforms
import matplotlib.tri as mtri
import matplotlib.transforms as mtrans
from matplotlib.container import BarContainer, ErrorbarContainer, StemContainer
from matplotlib.axes._base import _AxesBase
from matplotlib.axes._base import _process_plot_format
rcParams = matplotlib.rcParams
_alias_map = {'color': ['c'],
'linewidth': ['lw'],
'linestyle': ['ls'],
'facecolor': ['fc'],
'edgecolor': ['ec'],
'markerfacecolor': ['mfc'],
'markeredgecolor': ['mec'],
'markeredgewidth': ['mew'],
'markersize': ['ms'],
}
def _plot_args_replacer(args, data):
if len(args) == 1:
return ["y"]
elif len(args) == 2:
# this can be two cases: x,y or y,c
if not args[1] in data:
# this is not in data, so just assume that it is something which
# will not get replaced (color spec or array like).
return ["y", "c"]
# it's data, but could be a color code like 'ro' or 'b--'
# -> warn the user in that case...
try:
_process_plot_format(args[1])
except ValueError:
pass
else:
msg = "Second argument is ambiguous: could be a color spec " \
"but is in data. Using as data.\nEither rename the " \
"entry in data or use three arguments to plot."
warnings.warn(msg, RuntimeWarning, stacklevel=3)
return ["x", "y"]
elif len(args) == 3:
return ["x", "y", "c"]
else:
raise ValueError("Using arbitrary long args with data is not "
"supported due to ambiguity of arguments.\nUse "
"multiple plotting calls instead.")
# The axes module contains all the wrappers to plotting functions.
# All the other methods should go in the _AxesBase class.
class Axes(_AxesBase):
"""
The :class:`Axes` contains most of the figure elements:
:class:`~matplotlib.axis.Axis`, :class:`~matplotlib.axis.Tick`,
:class:`~matplotlib.lines.Line2D`, :class:`~matplotlib.text.Text`,
:class:`~matplotlib.patches.Polygon`, etc., and sets the
coordinate system.
The :class:`Axes` instance supports callbacks through a callbacks
attribute which is a :class:`~matplotlib.cbook.CallbackRegistry`
instance. The events you can connect to are 'xlim_changed' and
'ylim_changed' and the callback will be called with func(*ax*)
where *ax* is the :class:`Axes` instance.
"""
### Labelling, legend and texts
aname = 'Axes'
def get_title(self, loc="center"):
"""Get an axes title.
Get one of the three available axes titles. The available titles
are positioned above the axes in the center, flush with the left
edge, and flush with the right edge.
Parameters
----------
loc : {'center', 'left', 'right'}, str, optional
Which title to get, defaults to 'center'
Returns
-------
title: str
The title text string.
"""
try:
title = {'left': self._left_title,
'center': self.title,
'right': self._right_title}[loc.lower()]
except KeyError:
raise ValueError("'%s' is not a valid location" % loc)
return title.get_text()
def set_title(self, label, fontdict=None, loc="center", **kwargs):
"""
Set a title for the axes.
Set one of the three available axes titles. The available titles
are positioned above the axes in the center, flush with the left
edge, and flush with the right edge.
Parameters
----------
label : str
Text to use for the title
fontdict : dict
A dictionary controlling the appearance of the title text,
the default `fontdict` is::
{'fontsize': rcParams['axes.titlesize'],
'fontweight' : rcParams['axes.titleweight'],
'verticalalignment': 'baseline',
'horizontalalignment': loc}
loc : {'center', 'left', 'right'}, str, optional
Which title to set, defaults to 'center'
Returns
-------
text : :class:`~matplotlib.text.Text`
The matplotlib text instance representing the title
Other parameters
----------------
kwargs : text properties
Other keyword arguments are text properties, see
:class:`~matplotlib.text.Text` for a list of valid text
properties.
"""
try:
title = {'left': self._left_title,
'center': self.title,
'right': self._right_title}[loc.lower()]
except KeyError:
raise ValueError("'%s' is not a valid location" % loc)
default = {
'fontsize': rcParams['axes.titlesize'],
'fontweight': rcParams['axes.titleweight'],
'verticalalignment': 'baseline',
'horizontalalignment': loc.lower()}
title.set_text(label)
title.update(default)
if fontdict is not None:
title.update(fontdict)
title.update(kwargs)
return title
def get_xlabel(self):
"""
Get the xlabel text string.
"""
label = self.xaxis.get_label()
return label.get_text()
def set_xlabel(self, xlabel, fontdict=None, labelpad=None, **kwargs):
"""
Set the label for the xaxis.
Parameters
----------
xlabel : string
x label
labelpad : scalar, optional, default: None
spacing in points between the label and the x-axis
Other parameters
----------------
kwargs : `~matplotlib.text.Text` properties
See also
--------
text : for information on how override and the optional args work
"""
if labelpad is not None:
self.xaxis.labelpad = labelpad
return self.xaxis.set_label_text(xlabel, fontdict, **kwargs)
def get_ylabel(self):
"""
Get the ylabel text string.
"""
label = self.yaxis.get_label()
return label.get_text()
def set_ylabel(self, ylabel, fontdict=None, labelpad=None, **kwargs):
"""
Set the label for the yaxis
Parameters
----------
ylabel : string
y label
labelpad : scalar, optional, default: None
spacing in points between the label and the x-axis
Other parameters
----------------
kwargs : `~matplotlib.text.Text` properties
See also
--------
text : for information on how override and the optional args work
"""
if labelpad is not None:
self.yaxis.labelpad = labelpad
return self.yaxis.set_label_text(ylabel, fontdict, **kwargs)
def _get_legend_handles(self, legend_handler_map=None):
"""
Return a generator of artists that can be used as handles in
a legend.
"""
handles_original = (self.lines + self.patches +
self.collections + self.containers)
handler_map = mlegend.Legend.get_default_handler_map()
if legend_handler_map is not None:
handler_map = handler_map.copy()
handler_map.update(legend_handler_map)
has_handler = mlegend.Legend.get_legend_handler
for handle in handles_original:
label = handle.get_label()
if label != '_nolegend_' and has_handler(handler_map, handle):
yield handle
def get_legend_handles_labels(self, legend_handler_map=None):
"""
Return handles and labels for legend
``ax.legend()`` is equivalent to ::
h, l = ax.get_legend_handles_labels()
ax.legend(h, l)
"""
handles = []
labels = []
for handle in self._get_legend_handles(legend_handler_map):
label = handle.get_label()
if label and not label.startswith('_'):
handles.append(handle)
labels.append(label)
return handles, labels
def legend(self, *args, **kwargs):
"""
Places a legend on the axes.
To make a legend for lines which already exist on the axes
(via plot for instance), simply call this function with an iterable
of strings, one for each legend item. For example::
ax.plot([1, 2, 3])
ax.legend(['A simple line'])
However, in order to keep the "label" and the legend element
instance together, it is preferable to specify the label either at
artist creation, or by calling the
:meth:`~matplotlib.artist.Artist.set_label` method on the artist::
line, = ax.plot([1, 2, 3], label='Inline label')
# Overwrite the label by calling the method.
line.set_label('Label via method')
ax.legend()
Specific lines can be excluded from the automatic legend element
selection by defining a label starting with an underscore.
This is default for all artists, so calling :meth:`legend` without
any arguments and without setting the labels manually will result in
no legend being drawn.
For full control of which artists have a legend entry, it is possible
to pass an iterable of legend artists followed by an iterable of
legend labels respectively::
legend((line1, line2, line3), ('label1', 'label2', 'label3'))
Parameters
----------
loc : int or string or pair of floats, default: 'upper right'
The location of the legend. Possible codes are:
=============== =============
Location String Location Code
=============== =============
'best' 0
'upper right' 1
'upper left' 2
'lower left' 3
'lower right' 4
'right' 5
'center left' 6
'center right' 7
'lower center' 8
'upper center' 9
'center' 10
=============== =============
Alternatively can be a 2-tuple giving ``x, y`` of the lower-left
corner of the legend in axes coordinates (in which case
``bbox_to_anchor`` will be ignored).
bbox_to_anchor : :class:`matplotlib.transforms.BboxBase` instance \
or tuple of floats
Specify any arbitrary location for the legend in `bbox_transform`
coordinates (default Axes coordinates).
For example, to put the legend's upper right hand corner in the
center of the axes the following keywords can be used::
loc='upper right', bbox_to_anchor=(0.5, 0.5)
ncol : integer
The number of columns that the legend has. Default is 1.
prop : None or :class:`matplotlib.font_manager.FontProperties` or dict
The font properties of the legend. If None (default), the current
:data:`matplotlib.rcParams` will be used.
fontsize : int or float or {'xx-small', 'x-small', 'small', 'medium', \
'large', 'x-large', 'xx-large'}
Controls the font size of the legend. If the value is numeric the
size will be the absolute font size in points. String values are
relative to the current default font size. This argument is only
used if `prop` is not specified.
numpoints : None or int
The number of marker points in the legend when creating a legend
entry for a line/:class:`matplotlib.lines.Line2D`.
Default is ``None`` which will take the value from the
``legend.numpoints`` :data:`rcParam<matplotlib.rcParams>`.
scatterpoints : None or int
The number of marker points in the legend when creating a legend
entry for a scatter plot/
:class:`matplotlib.collections.PathCollection`.
Default is ``None`` which will take the value from the
``legend.scatterpoints`` :data:`rcParam<matplotlib.rcParams>`.
scatteryoffsets : iterable of floats
The vertical offset (relative to the font size) for the markers
created for a scatter plot legend entry. 0.0 is at the base the
legend text, and 1.0 is at the top. To draw all markers at the
same height, set to ``[0.5]``. Default ``[0.375, 0.5, 0.3125]``.
markerscale : None or int or float
The relative size of legend markers compared with the originally
drawn ones. Default is ``None`` which will take the value from
the ``legend.markerscale`` :data:`rcParam <matplotlib.rcParams>`.
markerfirst : bool
if *True*, legend marker is placed to the left of the legend label
if *False*, legend marker is placed to the right of the legend
label
frameon : None or bool
Control whether the legend should be drawn on a patch (frame).
Default is ``None`` which will take the value from the
``legend.frameon`` :data:`rcParam<matplotlib.rcParams>`.
fancybox : None or bool
Control whether round edges should be enabled around
the :class:`~matplotlib.patches.FancyBboxPatch` which
makes up the legend's background.
Default is ``None`` which will take the value from the
``legend.fancybox`` :data:`rcParam<matplotlib.rcParams>`.
shadow : None or bool
Control whether to draw a shadow behind the legend.
Default is ``None`` which will take the value from the
``legend.shadow`` :data:`rcParam<matplotlib.rcParams>`.
framealpha : None or float
Control the alpha transparency of the legend's background.
Default is ``None`` which will take the value from the
``legend.framealpha`` :data:`rcParam<matplotlib.rcParams>`.
facecolor : None or "inherit" or a color spec
Control the legend's background color.
Default is ``None`` which will take the value from the
``legend.facecolor`` :data:`rcParam<matplotlib.rcParams>`.
If ``"inherit"``, it will take the ``axes.facecolor``
:data:`rcParam<matplotlib.rcParams>`.
edgecolor : None or "inherit" or a color spec
Control the legend's background patch edge color.
Default is ``None`` which will take the value from the
``legend.edgecolor`` :data:`rcParam<matplotlib.rcParams>`.
If ``"inherit"``, it will take the ``axes.edgecolor``
:data:`rcParam<matplotlib.rcParams>`.
mode : {"expand", None}
If `mode` is set to ``"expand"`` the legend will be horizontally
expanded to fill the axes area (or `bbox_to_anchor` if defines
the legend's size).
bbox_transform : None or :class:`matplotlib.transforms.Transform`
The transform for the bounding box (`bbox_to_anchor`). For a value
of ``None`` (default) the Axes'
:data:`~matplotlib.axes.Axes.transAxes` transform will be used.
title : str or None
The legend's title. Default is no title (``None``).
borderpad : float or None
The fractional whitespace inside the legend border.
Measured in font-size units.
Default is ``None`` which will take the value from the
``legend.borderpad`` :data:`rcParam<matplotlib.rcParams>`.
labelspacing : float or None
The vertical space between the legend entries.
Measured in font-size units.
Default is ``None`` which will take the value from the
``legend.labelspacing`` :data:`rcParam<matplotlib.rcParams>`.
handlelength : float or None
The length of the legend handles.
Measured in font-size units.
Default is ``None`` which will take the value from the
``legend.handlelength`` :data:`rcParam<matplotlib.rcParams>`.
handletextpad : float or None
The pad between the legend handle and text.
Measured in font-size units.
Default is ``None`` which will take the value from the
``legend.handletextpad`` :data:`rcParam<matplotlib.rcParams>`.
borderaxespad : float or None
The pad between the axes and legend border.
Measured in font-size units.
Default is ``None`` which will take the value from the
``legend.borderaxespad`` :data:`rcParam<matplotlib.rcParams>`.
columnspacing : float or None
The spacing between columns.
Measured in font-size units.
Default is ``None`` which will take the value from the
``legend.columnspacing`` :data:`rcParam<matplotlib.rcParams>`.
handler_map : dict or None
The custom dictionary mapping instances or types to a legend
handler. This `handler_map` updates the default handler map
found at :func:`matplotlib.legend.Legend.get_legend_handler_map`.
Notes
-----
Not all kinds of artist are supported by the legend command.
See :ref:`plotting-guide-legend` for details.
Examples
--------
.. plot:: mpl_examples/api/legend_demo.py
"""
handlers = kwargs.get('handler_map', {}) or {}
# Support handles and labels being passed as keywords.
handles = kwargs.pop('handles', None)
labels = kwargs.pop('labels', None)
if (handles is not None or labels is not None) and len(args):
warnings.warn("You have mixed positional and keyword "
"arguments, some input will be "
"discarded.")
# if got both handles and labels as kwargs, make same length
if handles and labels:
handles, labels = zip(*zip(handles, labels))
elif handles is not None and labels is None:
labels = [handle.get_label() for handle in handles]
for label, handle in zip(labels[:], handles[:]):
if label.startswith('_'):
warnings.warn('The handle {!r} has a label of {!r} which '
'cannot be automatically added to the '
'legend.'.format(handle, label))
labels.remove(label)
handles.remove(handle)
elif labels is not None and handles is None:
# Get as many handles as there are labels.
handles = [handle for handle, label
in zip(self._get_legend_handles(handlers), labels)]
# No arguments - automatically detect labels and handles.
elif len(args) == 0:
handles, labels = self.get_legend_handles_labels(handlers)
if not handles:
warnings.warn("No labelled objects found. "
"Use label='...' kwarg on individual plots.")
return None
# One argument. User defined labels - automatic handle detection.
elif len(args) == 1:
labels, = args
# Get as many handles as there are labels.
handles = [handle for handle, label
in zip(self._get_legend_handles(handlers), labels)]
# Two arguments:
# * user defined handles and labels
elif len(args) == 2:
handles, labels = args
else:
raise TypeError('Invalid arguments to legend.')
self.legend_ = mlegend.Legend(self, handles, labels, **kwargs)
self.legend_._remove_method = lambda h: setattr(self, 'legend_', None)
return self.legend_
def text(self, x, y, s, fontdict=None,
withdash=False, **kwargs):
"""
Add text to the axes.
Add text in string `s` to axis at location `x`, `y`, data
coordinates.
Parameters
----------
x, y : scalars
data coordinates
s : string
text
fontdict : dictionary, optional, default: None
A dictionary to override the default text properties. If fontdict
is None, the defaults are determined by your rc parameters.
withdash : boolean, optional, default: False
Creates a `~matplotlib.text.TextWithDash` instance instead of a
`~matplotlib.text.Text` instance.
Other parameters
----------------
kwargs : `~matplotlib.text.Text` properties.
Other miscellaneous text parameters.
Examples
--------
Individual keyword arguments can be used to override any given
parameter::
>>> text(x, y, s, fontsize=12)
The default transform specifies that text is in data coords,
alternatively, you can specify text in axis coords (0,0 is
lower-left and 1,1 is upper-right). The example below places
text in the center of the axes::
>>> text(0.5, 0.5,'matplotlib', horizontalalignment='center',
... verticalalignment='center',
... transform=ax.transAxes)
You can put a rectangular box around the text instance (e.g., to
set a background color) by using the keyword `bbox`. `bbox` is
a dictionary of `~matplotlib.patches.Rectangle`
properties. For example::
>>> text(x, y, s, bbox=dict(facecolor='red', alpha=0.5))
"""
default = {
'verticalalignment': 'baseline',
'horizontalalignment': 'left',
'transform': self.transData,
'clip_on': False}
# At some point if we feel confident that TextWithDash
# is robust as a drop-in replacement for Text and that
# the performance impact of the heavier-weight class
# isn't too significant, it may make sense to eliminate
# the withdash kwarg and simply delegate whether there's
# a dash to TextWithDash and dashlength.
if withdash:
t = mtext.TextWithDash(
x=x, y=y, text=s)
else:
t = mtext.Text(
x=x, y=y, text=s)
t.update(default)
if fontdict is not None:
t.update(fontdict)
t.update(kwargs)
t.set_clip_path(self.patch)
self._add_text(t)
return t
@docstring.dedent_interpd
def annotate(self, *args, **kwargs):
a = mtext.Annotation(*args, **kwargs)
a.set_transform(mtransforms.IdentityTransform())
if 'clip_on' in kwargs:
a.set_clip_path(self.patch)
self._add_text(a)
return a
annotate.__doc__ = mtext.Annotation.__init__.__doc__
#### Lines and spans
@docstring.dedent_interpd
def axhline(self, y=0, xmin=0, xmax=1, **kwargs):
"""
Add a horizontal line across the axis.
Parameters
----------
y : scalar, optional, default: 0
y position in data coordinates of the horizontal line.
xmin : scalar, optional, default: 0
Should be between 0 and 1, 0 being the far left of the plot, 1 the
far right of the plot.
xmax : scalar, optional, default: 1
Should be between 0 and 1, 0 being the far left of the plot, 1 the
far right of the plot.
Returns
-------
:class:`~matplotlib.lines.Line2D`
Notes
-----
kwargs are passed to :class:`~matplotlib.lines.Line2D` and can be used
to control the line properties.
Examples
--------
* draw a thick red hline at 'y' = 0 that spans the xrange::
>>> axhline(linewidth=4, color='r')
* draw a default hline at 'y' = 1 that spans the xrange::
>>> axhline(y=1)
* draw a default hline at 'y' = .5 that spans the middle half of
the xrange::
>>> axhline(y=.5, xmin=0.25, xmax=0.75)
Valid kwargs are :class:`~matplotlib.lines.Line2D` properties,
with the exception of 'transform':
%(Line2D)s
See also
--------
axhspan : for example plot and source code
"""
if "transform" in kwargs:
raise ValueError(
"'transform' is not allowed as a kwarg;"
+ "axhline generates its own transform.")
ymin, ymax = self.get_ybound()
# We need to strip away the units for comparison with
# non-unitized bounds
self._process_unit_info(ydata=y, kwargs=kwargs)
yy = self.convert_yunits(y)
scaley = (yy < ymin) or (yy > ymax)
trans = self.get_yaxis_transform(which='grid')
l = mlines.Line2D([xmin, xmax], [y, y], transform=trans, **kwargs)
self.add_line(l)
self.autoscale_view(scalex=False, scaley=scaley)
return l
@docstring.dedent_interpd
def axvline(self, x=0, ymin=0, ymax=1, **kwargs):
"""
Add a vertical line across the axes.
Parameters
----------
x : scalar, optional, default: 0
x position in data coordinates of the vertical line.
ymin : scalar, optional, default: 0
Should be between 0 and 1, 0 being the bottom of the plot, 1 the
top of the plot.
ymax : scalar, optional, default: 1
Should be between 0 and 1, 0 being the bottom of the plot, 1 the
top of the plot.
Returns
-------
:class:`~matplotlib.lines.Line2D`
Examples
--------
* draw a thick red vline at *x* = 0 that spans the yrange::
>>> axvline(linewidth=4, color='r')
* draw a default vline at *x* = 1 that spans the yrange::
>>> axvline(x=1)
* draw a default vline at *x* = .5 that spans the middle half of
the yrange::
>>> axvline(x=.5, ymin=0.25, ymax=0.75)
Valid kwargs are :class:`~matplotlib.lines.Line2D` properties,
with the exception of 'transform':
%(Line2D)s
See also
--------
axhspan : for example plot and source code
"""
if "transform" in kwargs:
raise ValueError(
"'transform' is not allowed as a kwarg;"
+ "axvline generates its own transform.")
xmin, xmax = self.get_xbound()
# We need to strip away the units for comparison with
# non-unitized bounds
self._process_unit_info(xdata=x, kwargs=kwargs)
xx = self.convert_xunits(x)
scalex = (xx < xmin) or (xx > xmax)
trans = self.get_xaxis_transform(which='grid')
l = mlines.Line2D([x, x], [ymin, ymax], transform=trans, **kwargs)
self.add_line(l)
self.autoscale_view(scalex=scalex, scaley=False)
return l
@docstring.dedent_interpd
def axhspan(self, ymin, ymax, xmin=0, xmax=1, **kwargs):
"""
Add a horizontal span (rectangle) across the axis.
Draw a horizontal span (rectangle) from *ymin* to *ymax*.
With the default values of *xmin* = 0 and *xmax* = 1, this
always spans the xrange, regardless of the xlim settings, even
if you change them, e.g., with the :meth:`set_xlim` command.
That is, the horizontal extent is in axes coords: 0=left,
0.5=middle, 1.0=right but the *y* location is in data
coordinates.
Parameters
----------
ymin : float
Lower limit of the horizontal span in data units.
ymax : float
Upper limit of the horizontal span in data units.
xmin : float, optional, default: 0
Lower limit of the vertical span in axes (relative
0-1) units.
xmax : float, optional, default: 1
Upper limit of the vertical span in axes (relative
0-1) units.
Returns
-------
Polygon : `~matplotlib.patches.Polygon`
Other Parameters
----------------
kwargs : `~matplotlib.patches.Polygon` properties.
%(Polygon)s
See Also
--------
axvspan : Add a vertical span (rectangle) across the axes.
Examples
--------
.. plot:: mpl_examples/pylab_examples/axhspan_demo.py
"""
trans = self.get_yaxis_transform(which='grid')
# process the unit information
self._process_unit_info([xmin, xmax], [ymin, ymax], kwargs=kwargs)
# first we need to strip away the units
xmin, xmax = self.convert_xunits([xmin, xmax])
ymin, ymax = self.convert_yunits([ymin, ymax])
verts = (xmin, ymin), (xmin, ymax), (xmax, ymax), (xmax, ymin)
p = mpatches.Polygon(verts, **kwargs)
p.set_transform(trans)
self.add_patch(p)
self.autoscale_view(scalex=False)
return p
def axvspan(self, xmin, xmax, ymin=0, ymax=1, **kwargs):
"""
Add a vertical span (rectangle) across the axes.
Draw a vertical span (rectangle) from `xmin` to `xmax`. With
the default values of `ymin` = 0 and `ymax` = 1. This always
spans the yrange, regardless of the ylim settings, even if you
change them, e.g., with the :meth:`set_ylim` command. That is,
the vertical extent is in axes coords: 0=bottom, 0.5=middle,
1.0=top but the y location is in data coordinates.
Parameters
----------
xmin : scalar
Number indicating the first X-axis coordinate of the vertical
span rectangle in data units.
xmax : scalar
Number indicating the second X-axis coordinate of the vertical
span rectangle in data units.
ymin : scalar, optional
Number indicating the first Y-axis coordinate of the vertical
span rectangle in relative Y-axis units (0-1). Default to 0.
ymax : scalar, optional
Number indicating the second Y-axis coordinate of the vertical
span rectangle in relative Y-axis units (0-1). Default to 1.
Returns
-------
rectangle : matplotlib.patches.Polygon
Vertical span (rectangle) from (xmin, ymin) to (xmax, ymax).
Other Parameters
----------------
**kwargs
Optional parameters are properties of the class
matplotlib.patches.Polygon.
See Also
--------
axhspan
Examples
--------
Draw a vertical, green, translucent rectangle from x = 1.25 to
x = 1.55 that spans the yrange of the axes.
>>> axvspan(1.25, 1.55, facecolor='g', alpha=0.5)
"""
trans = self.get_xaxis_transform(which='grid')
# process the unit information
self._process_unit_info([xmin, xmax], [ymin, ymax], kwargs=kwargs)
# first we need to strip away the units
xmin, xmax = self.convert_xunits([xmin, xmax])
ymin, ymax = self.convert_yunits([ymin, ymax])
verts = [(xmin, ymin), (xmin, ymax), (xmax, ymax), (xmax, ymin)]
p = mpatches.Polygon(verts, **kwargs)
p.set_transform(trans)
self.add_patch(p)
self.autoscale_view(scaley=False)
return p
@unpack_labeled_data(replace_names=['y', 'xmin', 'xmax'], label_namer="y")
def hlines(self, y, xmin, xmax, colors='k', linestyles='solid',
label='', **kwargs):
"""
Plot horizontal lines at each `y` from `xmin` to `xmax`.
Parameters
----------
y : scalar or sequence of scalar
y-indexes where to plot the lines.
xmin, xmax : scalar or 1D array_like
Respective beginning and end of each line. If scalars are
provided, all lines will have same length.
colors : array_like of colors, optional, default: 'k'
linestyles : ['solid' | 'dashed' | 'dashdot' | 'dotted'], optional
label : string, optional, default: ''
Returns
-------
lines : `~matplotlib.collections.LineCollection`
Other parameters
----------------
kwargs : `~matplotlib.collections.LineCollection` properties.
See also
--------
vlines : vertical lines
Examples
--------
.. plot:: mpl_examples/pylab_examples/vline_hline_demo.py
"""
# We do the conversion first since not all unitized data is uniform
# process the unit information
self._process_unit_info([xmin, xmax], y, kwargs=kwargs)
y = self.convert_yunits(y)
xmin = self.convert_xunits(xmin)
xmax = self.convert_xunits(xmax)
if not iterable(y):
y = [y]
if not iterable(xmin):
xmin = [xmin]
if not iterable(xmax):
xmax = [xmax]
y, xmin, xmax = cbook.delete_masked_points(y, xmin, xmax)
y = np.ravel(y)
xmin = np.resize(xmin, y.shape)
xmax = np.resize(xmax, y.shape)
verts = [((thisxmin, thisy), (thisxmax, thisy))
for thisxmin, thisxmax, thisy in zip(xmin, xmax, y)]
lines = mcoll.LineCollection(verts, colors=colors,
linestyles=linestyles, label=label)
self.add_collection(lines, autolim=False)
lines.update(kwargs)
if len(y) > 0:
minx = min(xmin.min(), xmax.min())
maxx = max(xmin.max(), xmax.max())
miny = y.min()
maxy = y.max()
corners = (minx, miny), (maxx, maxy)
self.update_datalim(corners)
self.autoscale_view()
return lines
@unpack_labeled_data(replace_names=["x", "ymin", "ymax", "colors"],
label_namer="x")
def vlines(self, x, ymin, ymax, colors='k', linestyles='solid',
label='', **kwargs):
"""
Plot vertical lines.
Plot vertical lines at each `x` from `ymin` to `ymax`.
Parameters
----------
x : scalar or 1D array_like
x-indexes where to plot the lines.
ymin, ymax : scalar or 1D array_like
Respective beginning and end of each line. If scalars are
provided, all lines will have same length.
colors : array_like of colors, optional, default: 'k'
linestyles : ['solid' | 'dashed' | 'dashdot' | 'dotted'], optional
label : string, optional, default: ''
Returns
-------
lines : `~matplotlib.collections.LineCollection`
Other parameters
----------------
kwargs : `~matplotlib.collections.LineCollection` properties.
See also
--------
hlines : horizontal lines
Examples
--------
.. plot:: mpl_examples/pylab_examples/vline_hline_demo.py
"""
self._process_unit_info(xdata=x, ydata=[ymin, ymax], kwargs=kwargs)
# We do the conversion first since not all unitized data is uniform
x = self.convert_xunits(x)
ymin = self.convert_yunits(ymin)
ymax = self.convert_yunits(ymax)
if not iterable(x):
x = [x]
if not iterable(ymin):
ymin = [ymin]
if not iterable(ymax):
ymax = [ymax]
x, ymin, ymax = cbook.delete_masked_points(x, ymin, ymax)
x = np.ravel(x)
ymin = np.resize(ymin, x.shape)
ymax = np.resize(ymax, x.shape)
verts = [((thisx, thisymin), (thisx, thisymax))
for thisx, thisymin, thisymax in zip(x, ymin, ymax)]
#print 'creating line collection'
lines = mcoll.LineCollection(verts, colors=colors,
linestyles=linestyles, label=label)
self.add_collection(lines, autolim=False)
lines.update(kwargs)
if len(x) > 0:
minx = x.min()
maxx = x.max()
miny = min(ymin.min(), ymax.min())
maxy = max(ymin.max(), ymax.max())
corners = (minx, miny), (maxx, maxy)
self.update_datalim(corners)
self.autoscale_view()
return lines
@unpack_labeled_data(replace_names=["positions", "lineoffsets",
"linelengths", "linewidths",
"colors", "linestyles"],
label_namer=None)
@docstring.dedent_interpd
def eventplot(self, positions, orientation='horizontal', lineoffsets=1,
linelengths=1, linewidths=None, colors=None,
linestyles='solid', **kwargs):
"""
Plot identical parallel lines at specific positions.
Plot parallel lines at the given positions. positions should be a 1D
or 2D array-like object, with each row corresponding to a row or column
of lines.
This type of plot is commonly used in neuroscience for representing
neural events, where it is commonly called a spike raster, dot raster,
or raster plot.
However, it is useful in any situation where you wish to show the
timing or position of multiple sets of discrete events, such as the
arrival times of people to a business on each day of the month or the
date of hurricanes each year of the last century.
*orientation* : [ 'horizonal' | 'vertical' ]
'horizonal' : the lines will be vertical and arranged in rows
"vertical' : lines will be horizontal and arranged in columns
*lineoffsets* :
A float or array-like containing floats.
*linelengths* :
A float or array-like containing floats.
*linewidths* :
A float or array-like containing floats.
*colors*
must be a sequence of RGBA tuples (e.g., arbitrary color
strings, etc, not allowed) or a list of such sequences
*linestyles* :
[ 'solid' | 'dashed' | 'dashdot' | 'dotted' ] or an array of these
values
For linelengths, linewidths, colors, and linestyles, if only a single
value is given, that value is applied to all lines. If an array-like
is given, it must have the same length as positions, and each value
will be applied to the corresponding row or column in positions.
Returns a list of :class:`matplotlib.collections.EventCollection`
objects that were added.
kwargs are :class:`~matplotlib.collections.LineCollection` properties:
%(LineCollection)s
**Example:**
.. plot:: mpl_examples/pylab_examples/eventplot_demo.py
"""
self._process_unit_info(xdata=positions,
ydata=[lineoffsets, linelengths],
kwargs=kwargs)
# We do the conversion first since not all unitized data is uniform
positions = self.convert_xunits(positions)
lineoffsets = self.convert_yunits(lineoffsets)
linelengths = self.convert_yunits(linelengths)
if not iterable(positions):
positions = [positions]
elif any(iterable(position) for position in positions):
positions = [np.asanyarray(position) for position in positions]
else:
positions = [np.asanyarray(positions)]
if len(positions) == 0:
return []
# prevent 'singular' keys from **kwargs dict from overriding the effect
# of 'plural' keyword arguments (e.g. 'color' overriding 'colors')
colors = cbook.local_over_kwdict(colors, kwargs, 'color')
linewidths = cbook.local_over_kwdict(linewidths, kwargs, 'linewidth')
linestyles = cbook.local_over_kwdict(linestyles, kwargs, 'linestyle')
if not iterable(lineoffsets):
lineoffsets = [lineoffsets]
if not iterable(linelengths):
linelengths = [linelengths]
if not iterable(linewidths):
linewidths = [linewidths]
if not iterable(colors):
colors = [colors]
if hasattr(linestyles, 'lower') or not iterable(linestyles):
linestyles = [linestyles]
lineoffsets = np.asarray(lineoffsets)
linelengths = np.asarray(linelengths)
linewidths = np.asarray(linewidths)
if len(lineoffsets) == 0:
lineoffsets = [None]
if len(linelengths) == 0:
linelengths = [None]
if len(linewidths) == 0:
lineoffsets = [None]
if len(linewidths) == 0:
lineoffsets = [None]
if len(colors) == 0:
colors = [None]
if len(lineoffsets) == 1 and len(positions) != 1:
lineoffsets = np.tile(lineoffsets, len(positions))
lineoffsets[0] = 0
lineoffsets = np.cumsum(lineoffsets)
if len(linelengths) == 1:
linelengths = np.tile(linelengths, len(positions))
if len(linewidths) == 1:
linewidths = np.tile(linewidths, len(positions))
if len(colors) == 1:
colors = list(colors)
colors = colors * len(positions)
if len(linestyles) == 1:
linestyles = [linestyles] * len(positions)
if len(lineoffsets) != len(positions):
raise ValueError('lineoffsets and positions are unequal sized '
'sequences')
if len(linelengths) != len(positions):
raise ValueError('linelengths and positions are unequal sized '
'sequences')
if len(linewidths) != len(positions):
raise ValueError('linewidths and positions are unequal sized '
'sequences')
if len(colors) != len(positions):
raise ValueError('colors and positions are unequal sized '
'sequences')
if len(linestyles) != len(positions):
raise ValueError('linestyles and positions are unequal sized '
'sequences')
colls = []
for position, lineoffset, linelength, linewidth, color, linestyle in \
zip(positions, lineoffsets, linelengths, linewidths,
colors, linestyles):
coll = mcoll.EventCollection(position,
orientation=orientation,
lineoffset=lineoffset,
linelength=linelength,
linewidth=linewidth,
color=color,
linestyle=linestyle)
self.add_collection(coll, autolim=False)
coll.update(kwargs)
colls.append(coll)
if len(positions) > 0:
# try to get min/max
min_max = [(np.min(_p), np.max(_p)) for _p in positions
if len(_p) > 0]
# if we have any non-empty positions, try to autoscale
if len(min_max) > 0:
mins, maxes = zip(*min_max)
minpos = np.min(mins)
maxpos = np.max(maxes)
minline = (lineoffsets - linelengths).min()
maxline = (lineoffsets + linelengths).max()
if colls[0].is_horizontal():
corners = (minpos, minline), (maxpos, maxline)
else:
corners = (minline, minpos), (maxline, maxpos)
self.update_datalim(corners)
self.autoscale_view()
return colls
# ### Basic plotting
# The label_naming happens in `matplotlib.axes._base._plot_args`
@unpack_labeled_data(replace_names=["x", "y"],
positional_parameter_names=_plot_args_replacer,
label_namer=None)
@docstring.dedent_interpd
def plot(self, *args, **kwargs):
"""
Plot lines and/or markers to the
:class:`~matplotlib.axes.Axes`. *args* is a variable length
argument, allowing for multiple *x*, *y* pairs with an
optional format string. For example, each of the following is
legal::
plot(x, y) # plot x and y using default line style and color
plot(x, y, 'bo') # plot x and y using blue circle markers
plot(y) # plot y using x as index array 0..N-1
plot(y, 'r+') # ditto, but with red plusses
If *x* and/or *y* is 2-dimensional, then the corresponding columns
will be plotted.
If used with labeled data, make sure that the color spec is not
included as an element in data, as otherwise the last case
``plot("v","r", data={"v":..., "r":...)``
can be interpreted as the first case which would do ``plot(v, r)``
using the default line style and color.
If not used with labeled data (i.e., without a data argument),
an arbitrary number of *x*, *y*, *fmt* groups can be specified, as in::
a.plot(x1, y1, 'g^', x2, y2, 'g-')
Return value is a list of lines that were added.
By default, each line is assigned a different style specified by a
'style cycle'. To change this behavior, you can edit the
axes.prop_cycle rcParam.
The following format string characters are accepted to control
the line style or marker:
================ ===============================
character description
================ ===============================
``'-'`` solid line style
``'--'`` dashed line style
``'-.'`` dash-dot line style
``':'`` dotted line style
``'.'`` point marker
``','`` pixel marker
``'o'`` circle marker
``'v'`` triangle_down marker
``'^'`` triangle_up marker
``'<'`` triangle_left marker
``'>'`` triangle_right marker
``'1'`` tri_down marker
``'2'`` tri_up marker
``'3'`` tri_left marker
``'4'`` tri_right marker
``'s'`` square marker
``'p'`` pentagon marker
``'*'`` star marker
``'h'`` hexagon1 marker
``'H'`` hexagon2 marker
``'+'`` plus marker
``'x'`` x marker
``'D'`` diamond marker
``'d'`` thin_diamond marker
``'|'`` vline marker
``'_'`` hline marker
================ ===============================
The following color abbreviations are supported:
========== ========
character color
========== ========
'b' blue
'g' green
'r' red
'c' cyan
'm' magenta
'y' yellow
'k' black
'w' white
========== ========
In addition, you can specify colors in many weird and
wonderful ways, including full names (``'green'``), hex
strings (``'#008000'``), RGB or RGBA tuples (``(0,1,0,1)``) or
grayscale intensities as a string (``'0.8'``). Of these, the
string specifications can be used in place of a ``fmt`` group,
but the tuple forms can be used only as ``kwargs``.
Line styles and colors are combined in a single format string, as in
``'bo'`` for blue circles.
The *kwargs* can be used to set line properties (any property that has
a ``set_*`` method). You can use this to set a line label (for auto
legends), linewidth, anitialising, marker face color, etc. Here is an
example::
plot([1,2,3], [1,2,3], 'go-', label='line 1', linewidth=2)
plot([1,2,3], [1,4,9], 'rs', label='line 2')
axis([0, 4, 0, 10])
legend()
If you make multiple lines with one plot command, the kwargs
apply to all those lines, e.g.::
plot(x1, y1, x2, y2, antialiased=False)
Neither line will be antialiased.
You do not need to use format strings, which are just
abbreviations. All of the line properties can be controlled
by keyword arguments. For example, you can set the color,
marker, linestyle, and markercolor with::
plot(x, y, color='green', linestyle='dashed', marker='o',
markerfacecolor='blue', markersize=12).
See :class:`~matplotlib.lines.Line2D` for details.
The kwargs are :class:`~matplotlib.lines.Line2D` properties:
%(Line2D)s
kwargs *scalex* and *scaley*, if defined, are passed on to
:meth:`~matplotlib.axes.Axes.autoscale_view` to determine
whether the *x* and *y* axes are autoscaled; the default is
*True*.
"""
scalex = kwargs.pop('scalex', True)
scaley = kwargs.pop('scaley', True)
if not self._hold:
self.cla()
lines = []
kwargs = cbook.normalize_kwargs(kwargs, _alias_map)
for line in self._get_lines(*args, **kwargs):
self.add_line(line)
lines.append(line)
self.autoscale_view(scalex=scalex, scaley=scaley)
return lines
@unpack_labeled_data(replace_names=["x", "y"], label_namer="y")
@docstring.dedent_interpd
def plot_date(self, x, y, fmt='o', tz=None, xdate=True, ydate=False,
**kwargs):
"""
A plot with data that contains dates.
Similar to the :func:`~matplotlib.pyplot.plot` command, except
the *x* or *y* (or both) data is considered to be dates, and the
axis is labeled accordingly.
*x* and/or *y* can be a sequence of dates represented as float
days since 0001-01-01 UTC.
Note if you are using custom date tickers and formatters, it
may be necessary to set the formatters/locators after the call
to meth:`plot_date` since meth:`plot_date` will set the
default tick locator to
class:`matplotlib.dates.AutoDateLocator` (if the tick
locator is not already set to a
class:`matplotlib.dates.DateLocator` instance) and the
default tick formatter to
class:`matplotlib.dates.AutoDateFormatter` (if the tick
formatter is not already set to a
class:`matplotlib.dates.DateFormatter` instance).
Parameters
----------
fmt : string
The plot format string.
tz : [ *None* | timezone string | :class:`tzinfo` instance]
The time zone to use in labeling dates. If *None*, defaults to rc
value.
xdate : boolean
If *True*, the *x*-axis will be labeled with dates.
ydate : boolean
If *True*, the *y*-axis will be labeled with dates.
Returns
-------
lines
See Also
--------
matplotlib.dates : helper functions on dates
matplotlib.dates.date2num : how to convert dates to num
matplotlib.dates.num2date : how to convert num to dates
matplotlib.dates.drange : how floating point dates
Other Parameters
----------------
kwargs : :class:`matplotlib.lines.Line2D`
properties : %(Line2D)s
"""
if not self._hold:
self.cla()
if xdate:
self.xaxis_date(tz)
if ydate:
self.yaxis_date(tz)
ret = self.plot(x, y, fmt, **kwargs)
self.autoscale_view()
return ret
# @unpack_labeled_data() # let 'plot' do the unpacking..
@docstring.dedent_interpd
def loglog(self, *args, **kwargs):
"""
Make a plot with log scaling on both the *x* and *y* axis.
:func:`~matplotlib.pyplot.loglog` supports all the keyword
arguments of :func:`~matplotlib.pyplot.plot` and
:meth:`matplotlib.axes.Axes.set_xscale` /
:meth:`matplotlib.axes.Axes.set_yscale`.
Notable keyword arguments:
*basex*/*basey*: scalar > 1
Base of the *x*/*y* logarithm
*subsx*/*subsy*: [ *None* | sequence ]
The location of the minor *x*/*y* ticks; *None* defaults
to autosubs, which depend on the number of decades in the
plot; see :meth:`matplotlib.axes.Axes.set_xscale` /
:meth:`matplotlib.axes.Axes.set_yscale` for details
*nonposx*/*nonposy*: ['mask' | 'clip' ]
Non-positive values in *x* or *y* can be masked as
invalid, or clipped to a very small positive number
The remaining valid kwargs are
:class:`~matplotlib.lines.Line2D` properties:
%(Line2D)s
**Example:**
.. plot:: mpl_examples/pylab_examples/log_demo.py
"""
if not self._hold:
self.cla()
dx = {'basex': kwargs.pop('basex', 10),
'subsx': kwargs.pop('subsx', None),
'nonposx': kwargs.pop('nonposx', 'mask'),
}
dy = {'basey': kwargs.pop('basey', 10),
'subsy': kwargs.pop('subsy', None),
'nonposy': kwargs.pop('nonposy', 'mask'),
}
self.set_xscale('log', **dx)
self.set_yscale('log', **dy)
b = self._hold
self._hold = True # we've already processed the hold
l = self.plot(*args, **kwargs)
self._hold = b # restore the hold
return l
# @unpack_labeled_data() # let 'plot' do the unpacking..
@docstring.dedent_interpd
def semilogx(self, *args, **kwargs):
"""
Make a plot with log scaling on the *x* axis.
Parameters
----------
basex : float, optional
Base of the *x* logarithm. The scalar should be larger
than 1.
subsx : array_like, optional
The location of the minor xticks; *None* defaults to
autosubs, which depend on the number of decades in the
plot; see :meth:`~matplotlib.axes.Axes.set_xscale` for
details.
nonposx : string, optional, {'mask', 'clip'}
Non-positive values in *x* can be masked as
invalid, or clipped to a very small positive number.
Returns
-------
`~matplotlib.pyplot.plot`
Log-scaled plot on the *x* axis.
Other Parameters
----------------
:class:`~matplotlib.lines.Line2D` properties:
%(Line2D)s
See Also
--------
loglog : For example code and figure.
Notes
-----
This function supports all the keyword arguments of
:func:`~matplotlib.pyplot.plot` and
:meth:`matplotlib.axes.Axes.set_xscale`.
"""
if not self._hold:
self.cla()
d = {'basex': kwargs.pop('basex', 10),
'subsx': kwargs.pop('subsx', None),
'nonposx': kwargs.pop('nonposx', 'mask'),
}
self.set_xscale('log', **d)
b = self._hold
self._hold = True # we've already processed the hold
l = self.plot(*args, **kwargs)
self._hold = b # restore the hold
return l
# @unpack_labeled_data() # let 'plot' do the unpacking..
@docstring.dedent_interpd
def semilogy(self, *args, **kwargs):
r"""Make a plot with log scaling on the `y` axis.
Parameters
----------
basey : scalar > 1
Base of the `y` logarithm.
subsy : None or iterable
The location of the minor yticks. None defaults to
autosubs, which depend on the number of decades in the
plot. See :meth:`~matplotlib.axes.Axes.set_yscale` for
details.
nonposy : {'mask' | 'clip'} str
Non-positive values in `y` can be masked as
invalid, or clipped to a very small positive number.
Returns
-------
`~matplotlib.lines.Line2D`
Line instance of the plot.
Other Parameters
----------------
kwargs : `~matplotlib.lines.Line2D` properties,
`~matplotlib.pylab.plot` and
`matplotlib.axes.Axes.set_yscale` arguments.
%(Line2D)s
See also
--------
:meth:`loglog`: For example code and figure.
"""
if not self._hold:
self.cla()
d = {'basey': kwargs.pop('basey', 10),
'subsy': kwargs.pop('subsy', None),
'nonposy': kwargs.pop('nonposy', 'mask'),
}
self.set_yscale('log', **d)
b = self._hold
self._hold = True # we've already processed the hold
l = self.plot(*args, **kwargs)
self._hold = b # restore the hold
return l
@unpack_labeled_data(replace_names=["x"], label_namer="x")
def acorr(self, x, **kwargs):
"""
Plot the autocorrelation of `x`.
Parameters
----------
x : sequence of scalar
hold : boolean, optional, *deprecated*, default: True
detrend : callable, optional, default: `mlab.detrend_none`
x is detrended by the `detrend` callable. Default is no
normalization.
normed : boolean, optional, default: True
if True, input vectors are normalised to unit length.
usevlines : boolean, optional, default: True
if True, Axes.vlines is used to plot the vertical lines from the
origin to the acorr. Otherwise, Axes.plot is used.
maxlags : integer, optional, default: 10
number of lags to show. If None, will return all 2 * len(x) - 1
lags.
Returns
-------
(lags, c, line, b) : where:
- `lags` are a length 2`maxlags+1 lag vector.
- `c` is the 2`maxlags+1 auto correlation vectorI
- `line` is a `~matplotlib.lines.Line2D` instance returned by
`plot`.
- `b` is the x-axis.
Other parameters
----------------
linestyle : `~matplotlib.lines.Line2D` prop, optional, default: None
Only used if usevlines is False.
marker : string, optional, default: 'o'
Notes
-----
The cross correlation is performed with :func:`numpy.correlate` with
`mode` = 2.
Examples
--------
`~matplotlib.pyplot.xcorr` is top graph, and
`~matplotlib.pyplot.acorr` is bottom graph.
.. plot:: mpl_examples/pylab_examples/xcorr_demo.py
"""
if "hold" in kwargs:
warnings.warn("the 'hold' kwarg is deprecated", mplDeprecation)
return self.xcorr(x, x, **kwargs)
@unpack_labeled_data(replace_names=["x", "y"], label_namer="y")
def xcorr(self, x, y, normed=True, detrend=mlab.detrend_none,
usevlines=True, maxlags=10, **kwargs):
"""
Plot the cross correlation between *x* and *y*.
The correlation with lag k is defined as sum_n x[n+k] * conj(y[n]).
Parameters
----------
x : sequence of scalars of length n
y : sequence of scalars of length n
hold : boolean, optional, *deprecated*, default: True
detrend : callable, optional, default: `mlab.detrend_none`
x is detrended by the `detrend` callable. Default is no
normalization.
normed : boolean, optional, default: True
if True, input vectors are normalised to unit length.
usevlines : boolean, optional, default: True
if True, Axes.vlines is used to plot the vertical lines from the
origin to the acorr. Otherwise, Axes.plot is used.
maxlags : integer, optional, default: 10
number of lags to show. If None, will return all 2 * len(x) - 1
lags.
Returns
-------
(lags, c, line, b) : where:
- `lags` are a length 2`maxlags+1 lag vector.
- `c` is the 2`maxlags+1 auto correlation vectorI
- `line` is a `~matplotlib.lines.Line2D` instance returned by
`plot`.
- `b` is the x-axis (none, if plot is used).
Other parameters
----------------
linestyle : `~matplotlib.lines.Line2D` prop, optional, default: None
Only used if usevlines is False.
marker : string, optional, default: 'o'
Notes
-----
The cross correlation is performed with :func:`numpy.correlate` with
`mode` = 2.
"""
if "hold" in kwargs:
warnings.warn("the 'hold' kwarg is deprecated", mplDeprecation)
Nx = len(x)
if Nx != len(y):
raise ValueError('x and y must be equal length')
x = detrend(np.asarray(x))
y = detrend(np.asarray(y))
c = np.correlate(x, y, mode=2)
if normed:
c /= np.sqrt(np.dot(x, x) * np.dot(y, y))
if maxlags is None:
maxlags = Nx - 1
if maxlags >= Nx or maxlags < 1:
raise ValueError('maglags must be None or strictly '
'positive < %d' % Nx)
lags = np.arange(-maxlags, maxlags + 1)
c = c[Nx - 1 - maxlags:Nx + maxlags]
if usevlines:
a = self.vlines(lags, [0], c, **kwargs)
b = self.axhline(**kwargs)
else:
kwargs.setdefault('marker', 'o')
kwargs.setdefault('linestyle', 'None')
a, = self.plot(lags, c, **kwargs)
b = None
return lags, c, a, b
#### Specialized plotting
@unpack_labeled_data(replace_names=["x", "y"], label_namer="y")
def step(self, x, y, *args, **kwargs):
"""
Make a step plot.
Parameters
----------
x : array_like
1-D sequence, and it is assumed, but not checked,
that it is uniformly increasing.
y : array_like
1-D sequence, and it is assumed, but not checked,
that it is uniformly increasing.
Returns
-------
list
List of lines that were added.
Other parameters
----------------
where : [ 'pre' | 'post' | 'mid' ]
If 'pre' (the default), the interval from
x[i] to x[i+1] has level y[i+1].
If 'post', that interval has level y[i].
If 'mid', the jumps in *y* occur half-way between the
*x*-values.
Notes
-----
Additional parameters are the same as those for
:func:`~matplotlib.pyplot.plot`.
"""
where = kwargs.pop('where', 'pre')
if where not in ('pre', 'post', 'mid'):
raise ValueError("'where' argument to step must be "
"'pre', 'post' or 'mid'")
usr_linestyle = kwargs.pop('linestyle', '')
kwargs['linestyle'] = 'steps-' + where + usr_linestyle
return self.plot(x, y, *args, **kwargs)
@unpack_labeled_data(replace_names=["left", "height", "width", "bottom",
"color", "edgecolor", "linewidth",
"tick_label", "xerr", "yerr",
"ecolor"],
label_namer=None)
@docstring.dedent_interpd
def bar(self, left, height, width=0.8, bottom=None, **kwargs):
"""
Make a bar plot.
Make a bar plot with rectangles bounded by:
`left`, `left` + `width`, `bottom`, `bottom` + `height`
(left, right, bottom and top edges)
Parameters
----------
left : sequence of scalars
the x coordinates of the left sides of the bars
height : sequence of scalars
the heights of the bars
width : scalar or array-like, optional
the width(s) of the bars
default: 0.8
bottom : scalar or array-like, optional
the y coordinate(s) of the bars
default: None
color : scalar or array-like, optional
the colors of the bar faces
edgecolor : scalar or array-like, optional
the colors of the bar edges
linewidth : scalar or array-like, optional
width of bar edge(s). If None, use default
linewidth; If 0, don't draw edges.
default: None
tick_label : string or array-like, optional
the tick labels of the bars
default: None
xerr : scalar or array-like, optional
if not None, will be used to generate errorbar(s) on the bar chart
default: None
yerr : scalar or array-like, optional
if not None, will be used to generate errorbar(s) on the bar chart
default: None
ecolor : scalar or array-like, optional
specifies the color of errorbar(s)
default: None
capsize : scalar, optional
determines the length in points of the error bar caps
default: None, which will take the value from the
``errorbar.capsize`` :data:`rcParam<matplotlib.rcParams>`.
error_kw : dict, optional
dictionary of kwargs to be passed to errorbar method. *ecolor* and
*capsize* may be specified here rather than as independent kwargs.
align : {'center', 'edge'}, optional
If 'edge', aligns bars by their left edges (for vertical bars) and
by their bottom edges (for horizontal bars). If 'center', interpret
the `left` argument as the coordinates of the centers of the bars.
To align on the align bars on the right edge pass a negative
`width`.
orientation : {'vertical', 'horizontal'}, optional
The orientation of the bars.
log : boolean, optional
If true, sets the axis to be log scale.
default: False
Returns
-------
bars : matplotlib.container.BarContainer
Container with all of the bars + errorbars
Notes
-----
The optional arguments `color`, `edgecolor`, `linewidth`,
`xerr`, and `yerr` can be either scalars or sequences of
length equal to the number of bars. This enables you to use
bar as the basis for stacked bar charts, or candlestick plots.
Detail: `xerr` and `yerr` are passed directly to
:meth:`errorbar`, so they can also have shape 2xN for
independent specification of lower and upper errors.
Other optional kwargs:
%(Rectangle)s
See also
--------
barh: Plot a horizontal bar plot.
Examples
--------
**Example:** A stacked bar chart.
.. plot:: mpl_examples/pylab_examples/bar_stacked.py
"""
kwargs = cbook.normalize_kwargs(kwargs, mpatches._patch_alias_map)
if not self._hold:
self.cla()
color = kwargs.pop('color', None)
if color is None:
color = self._get_patches_for_fill.get_next_color()
edgecolor = kwargs.pop('edgecolor', None)
linewidth = kwargs.pop('linewidth', None)
# Because xerr and yerr will be passed to errorbar,
# most dimension checking and processing will be left
# to the errorbar method.
xerr = kwargs.pop('xerr', None)
yerr = kwargs.pop('yerr', None)
error_kw = kwargs.pop('error_kw', dict())
ecolor = kwargs.pop('ecolor', 'k')
capsize = kwargs.pop('capsize', rcParams["errorbar.capsize"])
error_kw.setdefault('ecolor', ecolor)
error_kw.setdefault('capsize', capsize)
if rcParams['_internal.classic_mode']:
align = kwargs.pop('align', 'edge')
else:
align = kwargs.pop('align', 'center')
orientation = kwargs.pop('orientation', 'vertical')
log = kwargs.pop('log', False)
label = kwargs.pop('label', '')
tick_labels = kwargs.pop('tick_label', None)
def make_iterable(x):
if not iterable(x):
return [x]
else:
return x
# make them safe to take len() of
_left = left
left = make_iterable(left)
height = make_iterable(height)
width = make_iterable(width)
_bottom = bottom
bottom = make_iterable(bottom)
linewidth = make_iterable(linewidth)
adjust_ylim = False
adjust_xlim = False
if orientation == 'vertical':
self._process_unit_info(xdata=left, ydata=height, kwargs=kwargs)
if log:
self.set_yscale('log', nonposy='clip')
# size width and bottom according to length of left
if _bottom is None:
if self.get_yscale() == 'log':
adjust_ylim = True
bottom = [0]
nbars = len(left)
if len(width) == 1:
width *= nbars
if len(bottom) == 1:
bottom *= nbars
tick_label_axis = self.xaxis
tick_label_position = left
elif orientation == 'horizontal':
self._process_unit_info(xdata=width, ydata=bottom, kwargs=kwargs)
if log:
self.set_xscale('log', nonposx='clip')
# size left and height according to length of bottom
if _left is None:
if self.get_xscale() == 'log':
adjust_xlim = True
left = [0]
nbars = len(bottom)
if len(left) == 1:
left *= nbars
if len(height) == 1:
height *= nbars
tick_label_axis = self.yaxis
tick_label_position = bottom
else:
raise ValueError('invalid orientation: %s' % orientation)
if len(linewidth) < nbars:
linewidth *= nbars
color = list(mcolors.to_rgba_array(color))
if len(color) == 0: # until to_rgba_array is changed
color = [[0, 0, 0, 0]]
if len(color) < nbars:
color *= nbars
if edgecolor is None:
edgecolor = [None] * nbars
else:
edgecolor = list(mcolors.to_rgba_array(edgecolor))
if len(edgecolor) == 0: # until to_rgba_array is changed
edgecolor = [[0, 0, 0, 0]]
if len(edgecolor) < nbars:
edgecolor *= nbars
# input validation
if len(left) != nbars:
raise ValueError("incompatible sizes: argument 'left' must "
"be length %d or scalar" % nbars)
if len(height) != nbars:
raise ValueError("incompatible sizes: argument 'height' "
"must be length %d or scalar" % nbars)
if len(width) != nbars:
raise ValueError("incompatible sizes: argument 'width' "
"must be length %d or scalar" % nbars)
if len(bottom) != nbars:
raise ValueError("incompatible sizes: argument 'bottom' "
"must be length %d or scalar" % nbars)
patches = []
# lets do some conversions now since some types cannot be
# subtracted uniformly
if self.xaxis is not None:
left = self.convert_xunits(left)
width = self.convert_xunits(width)
if xerr is not None:
xerr = self.convert_xunits(xerr)
if self.yaxis is not None:
bottom = self.convert_yunits(bottom)
height = self.convert_yunits(height)
if yerr is not None:
yerr = self.convert_yunits(yerr)
if align == 'center':
if orientation == 'vertical':
left = [left[i] - width[i] / 2. for i in xrange(len(left))]
elif orientation == 'horizontal':
bottom = [bottom[i] - height[i] / 2.
for i in xrange(len(bottom))]
elif align != 'edge':
raise ValueError('invalid alignment: %s' % align)
args = zip(left, bottom, width, height, color, edgecolor, linewidth)
for l, b, w, h, c, e, lw in args:
if h < 0:
b += h
h = abs(h)
if w < 0:
l += w
w = abs(w)
r = mpatches.Rectangle(
xy=(l, b), width=w, height=h,
facecolor=c,
edgecolor=e,
linewidth=lw,
label='_nolegend_',
)
r.update(kwargs)
r.get_path()._interpolation_steps = 100
if orientation == 'vertical':
r.sticky_edges.y.append(b)
elif orientation == 'horizontal':
r.sticky_edges.x.append(l)
self.add_patch(r)
patches.append(r)
holdstate = self._hold
self._hold = True # ensure hold is on before plotting errorbars
if xerr is not None or yerr is not None:
if orientation == 'vertical':
# using list comps rather than arrays to preserve unit info
x = [l + 0.5 * w for l, w in zip(left, width)]
y = [b + h for b, h in zip(bottom, height)]
elif orientation == 'horizontal':
# using list comps rather than arrays to preserve unit info
x = [l + w for l, w in zip(left, width)]
y = [b + 0.5 * h for b, h in zip(bottom, height)]
if "label" not in error_kw:
error_kw["label"] = '_nolegend_'
errorbar = self.errorbar(x, y,
yerr=yerr, xerr=xerr,
fmt='none', **error_kw)
else:
errorbar = None
self._hold = holdstate # restore previous hold state
if adjust_xlim:
xmin, xmax = self.dataLim.intervalx
xmin = np.amin([w for w in width if w > 0])
if xerr is not None:
xmin = xmin - np.amax(xerr)
xmin = max(xmin * 0.9, 1e-100)
self.dataLim.intervalx = (xmin, xmax)
if adjust_ylim:
ymin, ymax = self.dataLim.intervaly
ymin = np.amin([h for h in height if h > 0])
if yerr is not None:
ymin = ymin - np.amax(yerr)
ymin = max(ymin * 0.9, 1e-100)
self.dataLim.intervaly = (ymin, ymax)
self.autoscale_view()
bar_container = BarContainer(patches, errorbar, label=label)
self.add_container(bar_container)
if tick_labels is not None:
tick_labels = make_iterable(tick_labels)
if isinstance(tick_labels, six.string_types):
tick_labels = [tick_labels]
if len(tick_labels) == 1:
tick_labels *= nbars
if len(tick_labels) != nbars:
raise ValueError("incompatible sizes: argument 'tick_label' "
"must be length %d or string" % nbars)
tick_label_axis.set_ticks(tick_label_position)
tick_label_axis.set_ticklabels(tick_labels)
return bar_container
@docstring.dedent_interpd
def barh(self, bottom, width, height=0.8, left=None, **kwargs):
"""
Make a horizontal bar plot.
Make a horizontal bar plot with rectangles bounded by:
`left`, `left` + `width`, `bottom`, `bottom` + `height`
(left, right, bottom and top edges)
`bottom`, `width`, `height`, and `left` can be either scalars
or sequences
Parameters
----------
bottom : scalar or array-like
the y coordinate(s) of the bars
width : scalar or array-like
the width(s) of the bars
height : sequence of scalars, optional, default: 0.8
the heights of the bars
left : sequence of scalars
the x coordinates of the left sides of the bars
Returns
-------
`matplotlib.patches.Rectangle` instances.
Other parameters
----------------
color : scalar or array-like, optional
the colors of the bars
edgecolor : scalar or array-like, optional
the colors of the bar edges
linewidth : scalar or array-like, optional, default: None
width of bar edge(s). If None, use default
linewidth; If 0, don't draw edges.
tick_label : string or array-like, optional, default: None
the tick labels of the bars
xerr : scalar or array-like, optional, default: None
if not None, will be used to generate errorbar(s) on the bar chart
yerr : scalar or array-like, optional, default: None
if not None, will be used to generate errorbar(s) on the bar chart
ecolor : scalar or array-like, optional, default: None
specifies the color of errorbar(s)
capsize : scalar, optional
determines the length in points of the error bar caps
default: None, which will take the value from the
``errorbar.capsize`` :data:`rcParam<matplotlib.rcParams>`.
error_kw :
dictionary of kwargs to be passed to errorbar method. `ecolor` and
`capsize` may be specified here rather than as independent kwargs.
align : {'center', 'edge'}, optional
If 'edge', aligns bars by their left edges (for vertical
bars) and by their bottom edges (for horizontal bars). If
'center', interpret the `bottom` argument as the
coordinates of the centers of the bars. To align on the
align bars on the top edge pass a negative 'height'.
log : boolean, optional, default: False
If true, sets the axis to be log scale
Notes
-----
The optional arguments `color`, `edgecolor`, `linewidth`,
`xerr`, and `yerr` can be either scalars or sequences of
length equal to the number of bars. This enables you to use
bar as the basis for stacked bar charts, or candlestick plots.
Detail: `xerr` and `yerr` are passed directly to
:meth:`errorbar`, so they can also have shape 2xN for
independent specification of lower and upper errors.
Other optional kwargs:
%(Rectangle)s
See also
--------
bar: Plot a vertical bar plot.
"""
patches = self.bar(left=left, height=height, width=width,
bottom=bottom, orientation='horizontal', **kwargs)
return patches
@unpack_labeled_data(label_namer=None)
@docstring.dedent_interpd
def broken_barh(self, xranges, yrange, **kwargs):
"""
Plot horizontal bars.
A collection of horizontal bars spanning *yrange* with a sequence of
*xranges*.
Required arguments:
========= ==============================
Argument Description
========= ==============================
*xranges* sequence of (*xmin*, *xwidth*)
*yrange* sequence of (*ymin*, *ywidth*)
========= ==============================
kwargs are
:class:`matplotlib.collections.BrokenBarHCollection`
properties:
%(BrokenBarHCollection)s
these can either be a single argument, i.e.,::
facecolors = 'black'
or a sequence of arguments for the various bars, i.e.,::
facecolors = ('black', 'red', 'green')
**Example:**
.. plot:: mpl_examples/pylab_examples/broken_barh.py
"""
# process the unit information
if len(xranges):
xdata = cbook.safe_first_element(xranges)
else:
xdata = None
if len(yrange):
ydata = cbook.safe_first_element(yrange)
else:
ydata = None
self._process_unit_info(xdata=xdata,
ydata=ydata,
kwargs=kwargs)
xranges = self.convert_xunits(xranges)
yrange = self.convert_yunits(yrange)
col = mcoll.BrokenBarHCollection(xranges, yrange, **kwargs)
self.add_collection(col, autolim=True)
self.autoscale_view()
return col
@unpack_labeled_data(replace_all_args=True, label_namer=None)
def stem(self, *args, **kwargs):
"""
Create a stem plot.
Call signatures::
stem(y, linefmt='b-', markerfmt='bo', basefmt='r-')
stem(x, y, linefmt='b-', markerfmt='bo', basefmt='r-')
A stem plot plots vertical lines (using *linefmt*) at each *x*
location from the baseline to *y*, and places a marker there
using *markerfmt*. A horizontal line at 0 is is plotted using
*basefmt*.
If no *x* values are provided, the default is (0, 1, ..., len(y) - 1)
Return value is a tuple (*markerline*, *stemlines*,
*baseline*).
.. seealso::
This
`document <http://www.mathworks.com/help/techdoc/ref/stem.html>`_
for details.
**Example:**
.. plot:: mpl_examples/pylab_examples/stem_plot.py
"""
remember_hold = self._hold
if not self._hold:
self.cla()
self._hold = True
# Assume there's at least one data array
y = np.asarray(args[0])
args = args[1:]
# Try a second one
try:
second = np.asarray(args[0], dtype=np.float)
x, y = y, second
args = args[1:]
except (IndexError, ValueError):
# The second array doesn't make sense, or it doesn't exist
second = np.arange(len(y))
x = second
# Popping some defaults
try:
linefmt = kwargs['linefmt']
except KeyError:
try:
linefmt = args[0]
except IndexError:
linecolor = 'C0'
linemarker = 'None'
linestyle = '-'
else:
linestyle, linemarker, linecolor = \
_process_plot_format(linefmt)
else:
linestyle, linemarker, linecolor = _process_plot_format(linefmt)
try:
markerfmt = kwargs['markerfmt']
except KeyError:
try:
markerfmt = args[1]
except IndexError:
markercolor = 'C0'
markermarker = 'o'
markerstyle = 'None'
else:
markerstyle, markermarker, markercolor = \
_process_plot_format(markerfmt)
else:
markerstyle, markermarker, markercolor = \
_process_plot_format(markerfmt)
try:
basefmt = kwargs['basefmt']
except KeyError:
try:
basefmt = args[2]
except IndexError:
if rcParams['_internal.classic_mode']:
basecolor = 'C2'
else:
basecolor = 'C3'
basemarker = 'None'
basestyle = '-'
else:
basestyle, basemarker, basecolor = \
_process_plot_format(basefmt)
else:
basestyle, basemarker, basecolor = _process_plot_format(basefmt)
bottom = kwargs.pop('bottom', None)
label = kwargs.pop('label', None)
markerline, = self.plot(x, y, color=markercolor, linestyle=markerstyle,
marker=markermarker, label="_nolegend_")
if bottom is None:
bottom = 0
stemlines = []
for thisx, thisy in zip(x, y):
l, = self.plot([thisx, thisx], [bottom, thisy],
color=linecolor, linestyle=linestyle,
marker=linemarker, label="_nolegend_")
stemlines.append(l)
baseline, = self.plot([np.amin(x), np.amax(x)], [bottom, bottom],
color=basecolor, linestyle=basestyle,
marker=basemarker, label="_nolegend_")
self._hold = remember_hold
stem_container = StemContainer((markerline, stemlines, baseline),
label=label)
self.add_container(stem_container)
return stem_container
@unpack_labeled_data(replace_names=['x', 'explode', 'labels', 'colors'],
label_namer=None)
def pie(self, x, explode=None, labels=None, colors=None,
autopct=None, pctdistance=0.6, shadow=False, labeldistance=1.1,
startangle=None, radius=None, counterclock=True,
wedgeprops=None, textprops=None, center=(0, 0),
frame=False):
r"""
Plot a pie chart.
Make a pie chart of array *x*. The fractional area of each
wedge is given by x/sum(x). If sum(x) <= 1, then the values
of x give the fractional area directly and the array will not
be normalized. The wedges are plotted counterclockwise,
by default starting from the x-axis.
Keyword arguments:
*explode*: [ *None* | len(x) sequence ]
If not *None*, is a ``len(x)`` array which specifies the
fraction of the radius with which to offset each wedge.
*colors*: [ *None* | color sequence ]
A sequence of matplotlib color args through which the pie chart
will cycle. If `None`, will use the colors in the currently
active cycle.
*labels*: [ *None* | len(x) sequence of strings ]
A sequence of strings providing the labels for each wedge
*autopct*: [ *None* | format string | format function ]
If not *None*, is a string or function used to label the wedges
with their numeric value. The label will be placed inside the
wedge. If it is a format string, the label will be ``fmt%pct``.
If it is a function, it will be called.
*pctdistance*: scalar
The ratio between the center of each pie slice and the
start of the text generated by *autopct*. Ignored if
*autopct* is *None*; default is 0.6.
*labeldistance*: scalar
The radial distance at which the pie labels are drawn
*shadow*: [ *False* | *True* ]
Draw a shadow beneath the pie.
*startangle*: [ *None* | Offset angle ]
If not *None*, rotates the start of the pie chart by *angle*
degrees counterclockwise from the x-axis.
*radius*: [ *None* | scalar ]
The radius of the pie, if *radius* is *None* it will be set to 1.
*counterclock*: [ *False* | *True* ]
Specify fractions direction, clockwise or counterclockwise.
*wedgeprops*: [ *None* | dict of key value pairs ]
Dict of arguments passed to the wedge objects making the pie.
For example, you can pass in wedgeprops = { 'linewidth' : 3 }
to set the width of the wedge border lines equal to 3.
For more details, look at the doc/arguments of the wedge object.
By default `clip_on=False`.
*textprops*: [ *None* | dict of key value pairs ]
Dict of arguments to pass to the text objects.
*center*: [ (0,0) | sequence of 2 scalars ]
Center position of the chart.
*frame*: [ *False* | *True* ]
Plot axes frame with the chart.
The pie chart will probably look best if the figure and axes are
square, or the Axes aspect is equal. e.g.::
figure(figsize=(8,8))
ax = axes([0.1, 0.1, 0.8, 0.8])
or::
axes(aspect=1)
Return value:
If *autopct* is *None*, return the tuple (*patches*, *texts*):
- *patches* is a sequence of
:class:`matplotlib.patches.Wedge` instances
- *texts* is a list of the label
:class:`matplotlib.text.Text` instances.
If *autopct* is not *None*, return the tuple (*patches*,
*texts*, *autotexts*), where *patches* and *texts* are as
above, and *autotexts* is a list of
:class:`~matplotlib.text.Text` instances for the numeric
labels.
"""
x = np.asarray(x).astype(np.float32)
sx = float(x.sum())
if sx > 1:
x = np.divide(x, sx)
if labels is None:
labels = [''] * len(x)
if explode is None:
explode = [0] * len(x)
if len(x) != len(labels):
raise ValueError("'label' must be of length 'x'")
if len(x) != len(explode):
raise ValueError("'explode' must be of length 'x'")
if colors is None:
get_next_color = self._get_patches_for_fill.get_next_color
else:
color_cycle = itertools.cycle(colors)
def get_next_color():
return six.next(color_cycle)
if radius is None:
radius = 1
# Starting theta1 is the start fraction of the circle
if startangle is None:
theta1 = 0
else:
theta1 = startangle / 360.0
# set default values in wedge_prop
if wedgeprops is None:
wedgeprops = {}
if 'clip_on' not in wedgeprops:
wedgeprops['clip_on'] = False
if textprops is None:
textprops = {}
if 'clip_on' not in textprops:
textprops['clip_on'] = False
texts = []
slices = []
autotexts = []
i = 0
for frac, label, expl in cbook.safezip(x, labels, explode):
x, y = center
theta2 = (theta1 + frac) if counterclock else (theta1 - frac)
thetam = 2 * math.pi * 0.5 * (theta1 + theta2)
x += expl * math.cos(thetam)
y += expl * math.sin(thetam)
w = mpatches.Wedge((x, y), radius, 360. * min(theta1, theta2),
360. * max(theta1, theta2),
facecolor=get_next_color(),
**wedgeprops)
slices.append(w)
self.add_patch(w)
w.set_label(label)
if shadow:
# make sure to add a shadow after the call to
# add_patch so the figure and transform props will be
# set
shad = mpatches.Shadow(w, -0.02, -0.02)
shad.set_zorder(0.9 * w.get_zorder())
shad.set_label('_nolegend_')
self.add_patch(shad)
xt = x + labeldistance * radius * math.cos(thetam)
yt = y + labeldistance * radius * math.sin(thetam)
label_alignment = xt > 0 and 'left' or 'right'
t = self.text(xt, yt, label,
size=rcParams['xtick.labelsize'],
horizontalalignment=label_alignment,
verticalalignment='center',
**textprops)
texts.append(t)
if autopct is not None:
xt = x + pctdistance * radius * math.cos(thetam)
yt = y + pctdistance * radius * math.sin(thetam)
if is_string_like(autopct):
s = autopct % (100. * frac)
elif six.callable(autopct):
s = autopct(100. * frac)
else:
raise TypeError(
'autopct must be callable or a format string')
t = self.text(xt, yt, s,
horizontalalignment='center',
verticalalignment='center',
**textprops)
autotexts.append(t)
theta1 = theta2
i += 1
if not frame:
self.set_frame_on(False)
self.set_xlim((-1.25 + center[0],
1.25 + center[0]))
self.set_ylim((-1.25 + center[1],
1.25 + center[1]))
self.set_xticks([])
self.set_yticks([])
if autopct is None:
return slices, texts
else:
return slices, texts, autotexts
@unpack_labeled_data(replace_names=["x", "y", "xerr", "yerr"],
label_namer="y")
@docstring.dedent_interpd
def errorbar(self, x, y, yerr=None, xerr=None,
fmt='', ecolor=None, elinewidth=None, capsize=None,
barsabove=False, lolims=False, uplims=False,
xlolims=False, xuplims=False, errorevery=1, capthick=None,
**kwargs):
"""
Plot an errorbar graph.
Plot x versus y with error deltas in yerr and xerr.
Vertical errorbars are plotted if yerr is not None.
Horizontal errorbars are plotted if xerr is not None.
x, y, xerr, and yerr can all be scalars, which plots a
single error bar at x, y.
Parameters
----------
x : scalar
y : scalar
xerr/yerr : scalar or array-like, shape(n,1) or shape(2,n), optional
If a scalar number, len(N) array-like object, or an Nx1
array-like object, errorbars are drawn at +/-value relative
to the data. Default is None.
If a sequence of shape 2xN, errorbars are drawn at -row1
and +row2 relative to the data.
fmt : plot format string, optional, default: None
The plot format symbol. If fmt is 'none' (case-insensitive),
only the errorbars are plotted. This is used for adding
errorbars to a bar plot, for example. Default is '',
an empty plot format string; properties are
then identical to the defaults for :meth:`plot`.
ecolor : mpl color, optional, default: None
A matplotlib color arg which gives the color the errorbar lines;
if None, use the color of the line connecting the markers.
elinewidth : scalar, optional, default: None
The linewidth of the errorbar lines. If None, use the linewidth.
capsize : scalar, optional, default: None
The length of the error bar caps in points; if None, it will
take the value from ``errorbar.capsize``
:data:`rcParam<matplotlib.rcParams>`.
capthick : scalar, optional, default: None
An alias kwarg to markeredgewidth (a.k.a. - mew). This
setting is a more sensible name for the property that
controls the thickness of the error bar cap in points. For
backwards compatibility, if mew or markeredgewidth are given,
then they will over-ride capthick. This may change in future
releases.
barsabove : bool, optional, default: False
if True , will plot the errorbars above the plot
symbols. Default is below.
lolims / uplims / xlolims / xuplims : bool, optional, default:None
These arguments can be used to indicate that a value gives
only upper/lower limits. In that case a caret symbol is
used to indicate this. lims-arguments may be of the same
type as *xerr* and *yerr*. To use limits with inverted
axes, :meth:`set_xlim` or :meth:`set_ylim` must be called
before :meth:`errorbar`.
errorevery : positive integer, optional, default:1
subsamples the errorbars. e.g., if errorevery=5, errorbars for
every 5-th datapoint will be plotted. The data plot itself still
shows all data points.
Returns
-------
plotline : :class:`~matplotlib.lines.Line2D` instance
x, y plot markers and/or line
caplines : list of :class:`~matplotlib.lines.Line2D` instances
error bar cap
barlinecols : list of :class:`~matplotlib.collections.LineCollection`
horizontal and vertical error ranges.
Other Parameters
----------------
kwargs : All other keyword arguments are passed on to the plot
command for the markers. For example, this code makes big red
squares with thick green edges::
x,y,yerr = rand(3,10)
errorbar(x, y, yerr, marker='s', mfc='red',
mec='green', ms=20, mew=4)
where mfc, mec, ms and mew are aliases for the longer
property names, markerfacecolor, markeredgecolor, markersize
and markeredgewidth.
valid kwargs for the marker properties are
%(Line2D)s
Examples
--------
.. plot:: mpl_examples/statistics/errorbar_demo.py
"""
kwargs = cbook.normalize_kwargs(kwargs, _alias_map)
kwargs.setdefault('zorder', 2)
if errorevery < 1:
raise ValueError(
'errorevery has to be a strictly positive integer')
self._process_unit_info(xdata=x, ydata=y, kwargs=kwargs)
if not self._hold:
self.cla()
holdstate = self._hold
self._hold = True
if fmt is None:
fmt = 'none'
msg = ('Use of None object as fmt keyword argument to ' +
'suppress plotting of data values is deprecated ' +
'since 1.4; use the string "none" instead.')
warnings.warn(msg, mplDeprecation, stacklevel=1)
plot_line = (fmt.lower() != 'none')
label = kwargs.pop("label", None)
fmt_style_kwargs = {k: v for k, v in
zip(('linestyle', 'marker', 'color'),
_process_plot_format(fmt)) if v is not None}
if ('color' in kwargs or 'color' in fmt_style_kwargs or
ecolor is not None):
base_style = {}
if 'color' in kwargs:
base_style['color'] = kwargs.pop('color')
else:
base_style = six.next(self._get_lines.prop_cycler)
base_style['label'] = '_nolegend_'
base_style.update(fmt_style_kwargs)
if 'color' not in base_style:
base_style['color'] = 'C0'
if ecolor is None:
ecolor = base_style['color']
# make sure all the args are iterable; use lists not arrays to
# preserve units
if not iterable(x):
x = [x]
if not iterable(y):
y = [y]
if xerr is not None:
if not iterable(xerr):
xerr = [xerr] * len(x)
if yerr is not None:
if not iterable(yerr):
yerr = [yerr] * len(y)
# make the style dict for the 'normal' plot line
plot_line_style = dict(base_style)
plot_line_style.update(**kwargs)
if barsabove:
plot_line_style['zorder'] = kwargs['zorder'] - .1
else:
plot_line_style['zorder'] = kwargs['zorder'] + .1
# make the style dict for the line collections (the bars)
eb_lines_style = dict(base_style)
eb_lines_style.pop('marker', None)
eb_lines_style.pop('linestyle', None)
eb_lines_style['color'] = ecolor
if elinewidth:
eb_lines_style['linewidth'] = elinewidth
elif 'linewidth' in kwargs:
eb_lines_style['linewidth'] = kwargs['linewidth']
for key in ('transform', 'alpha', 'zorder', 'rasterized'):
if key in kwargs:
eb_lines_style[key] = kwargs[key]
# set up cap style dictionary
eb_cap_style = dict(base_style)
# eject any marker information from format string
eb_cap_style.pop('marker', None)
eb_cap_style.pop('ls', None)
eb_cap_style['linestyle'] = 'none'
if capsize is None:
capsize = rcParams["errorbar.capsize"]
if capsize > 0:
eb_cap_style['markersize'] = 2. * capsize
if capthick is not None:
eb_cap_style['markeredgewidth'] = capthick
# For backwards-compat, allow explicit setting of
# 'markeredgewidth' to over-ride capthick.
for key in ('markeredgewidth', 'transform', 'alpha',
'zorder', 'rasterized'):
if key in kwargs:
eb_cap_style[key] = kwargs[key]
eb_cap_style['color'] = ecolor
data_line = None
if plot_line:
data_line = mlines.Line2D(x, y, **plot_line_style)
self.add_line(data_line)
barcols = []
caplines = []
# arrays fine here, they are booleans and hence not units
def _bool_asarray_helper(d, expected):
if not iterable(d):
return np.asarray([d] * expected, bool)
else:
return np.asarray(d, bool)
lolims = _bool_asarray_helper(lolims, len(x))
uplims = _bool_asarray_helper(uplims, len(x))
xlolims = _bool_asarray_helper(xlolims, len(x))
xuplims = _bool_asarray_helper(xuplims, len(x))
everymask = np.arange(len(x)) % errorevery == 0
def xywhere(xs, ys, mask):
"""
return xs[mask], ys[mask] where mask is True but xs and
ys are not arrays
"""
assert len(xs) == len(ys)
assert len(xs) == len(mask)
xs = [thisx for thisx, b in zip(xs, mask) if b]
ys = [thisy for thisy, b in zip(ys, mask) if b]
return xs, ys
def extract_err(err, data):
'''private function to compute error bars
Parameters
----------
err : iterable
xerr or yerr from errorbar
data : iterable
x or y from errorbar
'''
if (iterable(err) and len(err) == 2):
a, b = err
if iterable(a) and iterable(b):
# using list comps rather than arrays to preserve units
low = [thisx - thiserr for (thisx, thiserr)
in cbook.safezip(data, a)]
high = [thisx + thiserr for (thisx, thiserr)
in cbook.safezip(data, b)]
return low, high
# Check if xerr is scalar or symmetric. Asymmetric is handled
# above. This prevents Nx2 arrays from accidentally
# being accepted, when the user meant the 2xN transpose.
# special case for empty lists
if len(err) > 1:
fe = safe_first_element(err)
if not ((len(err) == len(data) and not (iterable(fe) and
len(fe) > 1))):
raise ValueError("err must be [ scalar | N, Nx1 "
"or 2xN array-like ]")
# using list comps rather than arrays to preserve units
low = [thisx - thiserr for (thisx, thiserr)
in cbook.safezip(data, err)]
high = [thisx + thiserr for (thisx, thiserr)
in cbook.safezip(data, err)]
return low, high
if xerr is not None:
left, right = extract_err(xerr, x)
# select points without upper/lower limits in x and
# draw normal errorbars for these points
noxlims = ~(xlolims | xuplims)
if noxlims.any():
yo, _ = xywhere(y, right, noxlims & everymask)
lo, ro = xywhere(left, right, noxlims & everymask)
barcols.append(self.hlines(yo, lo, ro, **eb_lines_style))
if capsize > 0:
caplines.append(mlines.Line2D(lo, yo, marker='|',
**eb_cap_style))
caplines.append(mlines.Line2D(ro, yo, marker='|',
**eb_cap_style))
if xlolims.any():
yo, _ = xywhere(y, right, xlolims & everymask)
lo, ro = xywhere(x, right, xlolims & everymask)
barcols.append(self.hlines(yo, lo, ro, **eb_lines_style))
rightup, yup = xywhere(right, y, xlolims & everymask)
if self.xaxis_inverted():
marker = mlines.CARETLEFTBASE
else:
marker = mlines.CARETRIGHTBASE
caplines.append(
mlines.Line2D(rightup, yup, ls='None', marker=marker,
**eb_cap_style))
if capsize > 0:
xlo, ylo = xywhere(x, y, xlolims & everymask)
caplines.append(mlines.Line2D(xlo, ylo, marker='|',
**eb_cap_style))
if xuplims.any():
yo, _ = xywhere(y, right, xuplims & everymask)
lo, ro = xywhere(left, x, xuplims & everymask)
barcols.append(self.hlines(yo, lo, ro, **eb_lines_style))
leftlo, ylo = xywhere(left, y, xuplims & everymask)
if self.xaxis_inverted():
marker = mlines.CARETRIGHTBASE
else:
marker = mlines.CARETLEFTBASE
caplines.append(
mlines.Line2D(leftlo, ylo, ls='None', marker=marker,
**eb_cap_style))
if capsize > 0:
xup, yup = xywhere(x, y, xuplims & everymask)
caplines.append(mlines.Line2D(xup, yup, marker='|',
**eb_cap_style))
if yerr is not None:
lower, upper = extract_err(yerr, y)
# select points without upper/lower limits in y and
# draw normal errorbars for these points
noylims = ~(lolims | uplims)
if noylims.any():
xo, _ = xywhere(x, lower, noylims & everymask)
lo, uo = xywhere(lower, upper, noylims & everymask)
barcols.append(self.vlines(xo, lo, uo, **eb_lines_style))
if capsize > 0:
caplines.append(mlines.Line2D(xo, lo, marker='_',
**eb_cap_style))
caplines.append(mlines.Line2D(xo, uo, marker='_',
**eb_cap_style))
if lolims.any():
xo, _ = xywhere(x, lower, lolims & everymask)
lo, uo = xywhere(y, upper, lolims & everymask)
barcols.append(self.vlines(xo, lo, uo, **eb_lines_style))
xup, upperup = xywhere(x, upper, lolims & everymask)
if self.yaxis_inverted():
marker = mlines.CARETDOWNBASE
else:
marker = mlines.CARETUPBASE
caplines.append(
mlines.Line2D(xup, upperup, ls='None', marker=marker,
**eb_cap_style))
if capsize > 0:
xlo, ylo = xywhere(x, y, lolims & everymask)
caplines.append(mlines.Line2D(xlo, ylo, marker='_',
**eb_cap_style))
if uplims.any():
xo, _ = xywhere(x, lower, uplims & everymask)
lo, uo = xywhere(lower, y, uplims & everymask)
barcols.append(self.vlines(xo, lo, uo, **eb_lines_style))
xlo, lowerlo = xywhere(x, lower, uplims & everymask)
if self.yaxis_inverted():
marker = mlines.CARETUPBASE
else:
marker = mlines.CARETDOWNBASE
caplines.append(
mlines.Line2D(xlo, lowerlo, ls='None', marker=marker,
**eb_cap_style))
if capsize > 0:
xup, yup = xywhere(x, y, uplims & everymask)
caplines.append(mlines.Line2D(xup, yup, marker='_',
**eb_cap_style))
for l in caplines:
self.add_line(l)
self.autoscale_view()
self._hold = holdstate
errorbar_container = ErrorbarContainer((data_line, tuple(caplines),
tuple(barcols)),
has_xerr=(xerr is not None),
has_yerr=(yerr is not None),
label=label)
self.containers.append(errorbar_container)
return errorbar_container # (l0, caplines, barcols)
@unpack_labeled_data(label_namer=None)
def boxplot(self, x, notch=None, sym=None, vert=None, whis=None,
positions=None, widths=None, patch_artist=None,
bootstrap=None, usermedians=None, conf_intervals=None,
meanline=None, showmeans=None, showcaps=None,
showbox=None, showfliers=None, boxprops=None,
labels=None, flierprops=None, medianprops=None,
meanprops=None, capprops=None, whiskerprops=None,
manage_xticks=True, autorange=False, zorder=None):
"""
Make a box and whisker plot.
Make a box and whisker plot for each column of ``x`` or each
vector in sequence ``x``. The box extends from the lower to
upper quartile values of the data, with a line at the median.
The whiskers extend from the box to show the range of the
data. Flier points are those past the end of the whiskers.
Parameters
----------
x : Array or a sequence of vectors.
The input data.
notch : bool, optional (False)
If `True`, will produce a notched box plot. Otherwise, a
rectangular boxplot is produced. The notches represent the
confidence interval (CI) around the median. See the entry
for the ``bootstrap`` parameter for information regarding
how the locations of the notches are computed.
.. note::
In cases where the values of the CI are less than the
lower quartile or greater than the upper quartile, the
notches will extend beyond the box, giving it a
distinctive "flipped" appearance. This is expected
behavior and consistent with other statistical
visualization packages.
sym : str, optional
The default symbol for flier points. Enter an empty string
('') if you don't want to show fliers. If `None`, then the
fliers default to 'b+' If you want more control use the
flierprops kwarg.
vert : bool, optional (True)
If `True` (default), makes the boxes vertical. If `False`,
everything is drawn horizontally.
whis : float, sequence, or string (default = 1.5)
As a float, determines the reach of the whiskers past the
first and third quartiles (e.g., Q3 + whis*IQR,
IQR = interquartile range, Q3-Q1). Beyond the whiskers, data
are considered outliers and are plotted as individual
points. Set this to an unreasonably high value to force the
whiskers to show the min and max values. Alternatively, set
this to an ascending sequence of percentile (e.g., [5, 95])
to set the whiskers at specific percentiles of the data.
Finally, ``whis`` can be the string ``'range'`` to force the
whiskers to the min and max of the data.
bootstrap : int, optional
Specifies whether to bootstrap the confidence intervals
around the median for notched boxplots. If ``bootstrap`` is
None, no bootstrapping is performed, and notches are
calculated using a Gaussian-based asymptotic approximation
(see McGill, R., Tukey, J.W., and Larsen, W.A., 1978, and
Kendall and Stuart, 1967). Otherwise, bootstrap specifies
the number of times to bootstrap the median to determine its
95% confidence intervals. Values between 1000 and 10000 are
recommended.
usermedians : array-like, optional
An array or sequence whose first dimension (or length) is
compatible with ``x``. This overrides the medians computed
by matplotlib for each element of ``usermedians`` that is not
`None`. When an element of ``usermedians`` is None, the median
will be computed by matplotlib as normal.
conf_intervals : array-like, optional
Array or sequence whose first dimension (or length) is
compatible with ``x`` and whose second dimension is 2. When
the an element of ``conf_intervals`` is not None, the
notch locations computed by matplotlib are overridden
(provided ``notch`` is `True`). When an element of
``conf_intervals`` is `None`, the notches are computed by the
method specified by the other kwargs (e.g., ``bootstrap``).
positions : array-like, optional
Sets the positions of the boxes. The ticks and limits are
automatically set to match the positions. Defaults to
`range(1, N+1)` where N is the number of boxes to be drawn.
widths : scalar or array-like
Sets the width of each box either with a scalar or a
sequence. The default is 0.5, or ``0.15*(distance between
extreme positions)``, if that is smaller.
patch_artist : bool, optional (False)
If `False` produces boxes with the Line2D artist. Otherwise,
boxes and drawn with Patch artists.
labels : sequence, optional
Labels for each dataset. Length must be compatible with
dimensions of ``x``.
manage_xticks : bool, optional (True)
If the function should adjust the xlim and xtick locations.
autorange : bool, optional (False)
When `True` and the data are distributed such that the 25th and
75th percentiles are equal, ``whis`` is set to ``'range'`` such
that the whisker ends are at the minimum and maximum of the
data.
meanline : bool, optional (False)
If `True` (and ``showmeans`` is `True`), will try to render
the mean as a line spanning the full width of the box
according to ``meanprops`` (see below). Not recommended if
``shownotches`` is also True. Otherwise, means will be shown
as points.
zorder : scalar, optional (None)
Sets the zorder of the boxplot.
Other Parameters
----------------
showcaps : bool, optional (True)
Show the caps on the ends of whiskers.
showbox : bool, optional (True)
Show the central box.
showfliers : bool, optional (True)
Show the outliers beyond the caps.
showmeans : bool, optional (False)
Show the arithmetic means.
capprops : dict, optional (None)
Specifies the style of the caps.
boxprops : dict, optional (None)
Specifies the style of the box.
whiskerprops : dict, optional (None)
Specifies the style of the whiskers.
flierprops : dict, optional (None)
Specifies the style of the fliers.
medianprops : dict, optional (None)
Specifies the style of the median.
meanprops : dict, optional (None)
Specifies the style of the mean.
Returns
-------
result : dict
A dictionary mapping each component of the boxplot to a list
of the :class:`matplotlib.lines.Line2D` instances
created. That dictionary has the following keys (assuming
vertical boxplots):
- ``boxes``: the main body of the boxplot showing the
quartiles and the median's confidence intervals if
enabled.
- ``medians``: horizontal lines at the median of each box.
- ``whiskers``: the vertical lines extending to the most
extreme, non-outlier data points.
- ``caps``: the horizontal lines at the ends of the
whiskers.
- ``fliers``: points representing data that extend beyond
the whiskers (fliers).
- ``means``: points or lines representing the means.
Examples
--------
.. plot:: mpl_examples/statistics/boxplot_demo.py
"""
# If defined in matplotlibrc, apply the value from rc file
# Overridden if argument is passed
if whis is None:
whis = rcParams['boxplot.whiskers']
if bootstrap is None:
bootstrap = rcParams['boxplot.bootstrap']
bxpstats = cbook.boxplot_stats(x, whis=whis, bootstrap=bootstrap,
labels=labels, autorange=autorange)
if notch is None:
notch = rcParams['boxplot.notch']
if vert is None:
vert = rcParams['boxplot.vertical']
if patch_artist is None:
patch_artist = rcParams['boxplot.patchartist']
if meanline is None:
meanline = rcParams['boxplot.meanline']
if showmeans is None:
showmeans = rcParams['boxplot.showmeans']
if showcaps is None:
showcaps = rcParams['boxplot.showcaps']
if showbox is None:
showbox = rcParams['boxplot.showbox']
if showfliers is None:
showfliers = rcParams['boxplot.showfliers']
def _update_dict(dictionary, rc_name, properties):
""" Loads properties in the dictionary from rc file if not already
in the dictionary"""
rc_str = 'boxplot.{0}.{1}'
if dictionary is None:
dictionary = dict()
for prop_dict in properties:
dictionary.setdefault(prop_dict,
rcParams[rc_str.format(rc_name, prop_dict)])
return dictionary
# Common property dictionnaries loading from rc
flier_props = ['color', 'marker', 'markerfacecolor', 'markeredgecolor',
'markersize', 'linestyle', 'linewidth']
default_props = ['color', 'linewidth', 'linestyle']
boxprops = _update_dict(boxprops, 'boxprops', default_props)
whiskerprops = _update_dict(whiskerprops, 'whiskerprops',
default_props)
capprops = _update_dict(capprops, 'capprops', default_props)
medianprops = _update_dict(medianprops, 'medianprops', default_props)
meanprops = _update_dict(meanprops, 'meanprops', default_props)
flierprops = _update_dict(flierprops, 'flierprops', flier_props)
if patch_artist:
boxprops['linestyle'] = 'solid'
boxprops['edgecolor'] = boxprops.pop('color')
# if non-default sym value, put it into the flier dictionary
# the logic for providing the default symbol ('b+') now lives
# in bxp in the initial value of final_flierprops
# handle all of the `sym` related logic here so we only have to pass
# on the flierprops dict.
if sym is not None:
# no-flier case, which should really be done with
# 'showfliers=False' but none-the-less deal with it to keep back
# compatibility
if sym == '':
# blow away existing dict and make one for invisible markers
flierprops = dict(linestyle='none', marker='', color='none')
# turn the fliers off just to be safe
showfliers = False
# now process the symbol string
else:
# process the symbol string
# discarded linestyle
_, marker, color = _process_plot_format(sym)
# if we have a marker, use it
if marker is not None:
flierprops['marker'] = marker
# if we have a color, use it
if color is not None:
# assume that if color is passed in the user want
# filled symbol, if the users want more control use
# flierprops
flierprops['color'] = color
flierprops['markerfacecolor'] = color
flierprops['markeredgecolor'] = color
# replace medians if necessary:
if usermedians is not None:
if (len(np.ravel(usermedians)) != len(bxpstats) or
np.shape(usermedians)[0] != len(bxpstats)):
medmsg = 'usermedians length not compatible with x'
raise ValueError(medmsg)
else:
# reassign medians as necessary
for stats, med in zip(bxpstats, usermedians):
if med is not None:
stats['med'] = med
if conf_intervals is not None:
if np.shape(conf_intervals)[0] != len(bxpstats):
err_mess = 'conf_intervals length not compatible with x'
raise ValueError(err_mess)
else:
for stats, ci in zip(bxpstats, conf_intervals):
if ci is not None:
if len(ci) != 2:
raise ValueError('each confidence interval must '
'have two values')
else:
if ci[0] is not None:
stats['cilo'] = ci[0]
if ci[1] is not None:
stats['cihi'] = ci[1]
artists = self.bxp(bxpstats, positions=positions, widths=widths,
vert=vert, patch_artist=patch_artist,
shownotches=notch, showmeans=showmeans,
showcaps=showcaps, showbox=showbox,
boxprops=boxprops, flierprops=flierprops,
medianprops=medianprops, meanprops=meanprops,
meanline=meanline, showfliers=showfliers,
capprops=capprops, whiskerprops=whiskerprops,
manage_xticks=manage_xticks, zorder=zorder)
return artists
def bxp(self, bxpstats, positions=None, widths=None, vert=True,
patch_artist=False, shownotches=False, showmeans=False,
showcaps=True, showbox=True, showfliers=True,
boxprops=None, whiskerprops=None, flierprops=None,
medianprops=None, capprops=None, meanprops=None,
meanline=False, manage_xticks=True, zorder=None):
"""
Drawing function for box and whisker plots.
Make a box and whisker plot for each column of *x* or each
vector in sequence *x*. The box extends from the lower to
upper quartile values of the data, with a line at the median.
The whiskers extend from the box to show the range of the
data. Flier points are those past the end of the whiskers.
Parameters
----------
bxpstats : list of dicts
A list of dictionaries containing stats for each boxplot.
Required keys are:
- ``med``: The median (scalar float).
- ``q1``: The first quartile (25th percentile) (scalar
float).
- ``q3``: The third quartile (75th percentile) (scalar
float).
- ``whislo``: Lower bound of the lower whisker (scalar
float).
- ``whishi``: Upper bound of the upper whisker (scalar
float).
Optional keys are:
- ``mean``: The mean (scalar float). Needed if
``showmeans=True``.
- ``fliers``: Data beyond the whiskers (sequence of floats).
Needed if ``showfliers=True``.
- ``cilo`` & ``cihi``: Lower and upper confidence intervals
about the median. Needed if ``shownotches=True``.
- ``label``: Name of the dataset (string). If available,
this will be used a tick label for the boxplot
positions : array-like, default = [1, 2, ..., n]
Sets the positions of the boxes. The ticks and limits
are automatically set to match the positions.
widths : array-like, default = 0.5
Either a scalar or a vector and sets the width of each
box. The default is 0.5, or ``0.15*(distance between extreme
positions)`` if that is smaller.
vert : bool, default = False
If `True` (default), makes the boxes vertical. If `False`,
makes horizontal boxes.
patch_artist : bool, default = False
If `False` produces boxes with the
`~matplotlib.lines.Line2D` artist. If `True` produces boxes
with the `~matplotlib.patches.Patch` artist.
shownotches : bool, default = False
If `False` (default), produces a rectangular box plot.
If `True`, will produce a notched box plot
showmeans : bool, default = False
If `True`, will toggle on the rendering of the means
showcaps : bool, default = True
If `True`, will toggle on the rendering of the caps
showbox : bool, default = True
If `True`, will toggle on the rendering of the box
showfliers : bool, default = True
If `True`, will toggle on the rendering of the fliers
boxprops : dict or None (default)
If provided, will set the plotting style of the boxes
whiskerprops : dict or None (default)
If provided, will set the plotting style of the whiskers
capprops : dict or None (default)
If provided, will set the plotting style of the caps
flierprops : dict or None (default)
If provided will set the plotting style of the fliers
medianprops : dict or None (default)
If provided, will set the plotting style of the medians
meanprops : dict or None (default)
If provided, will set the plotting style of the means
meanline : bool, default = False
If `True` (and *showmeans* is `True`), will try to render the mean
as a line spanning the full width of the box according to
*meanprops*. Not recommended if *shownotches* is also True.
Otherwise, means will be shown as points.
manage_xticks : bool, default = True
If the function should adjust the xlim and xtick locations.
zorder : scalar, default = None
The zorder of the resulting boxplot
Returns
-------
result : dict
A dictionary mapping each component of the boxplot to a list
of the :class:`matplotlib.lines.Line2D` instances
created. That dictionary has the following keys (assuming
vertical boxplots):
- ``boxes``: the main body of the boxplot showing the
quartiles and the median's confidence intervals if
enabled.
- ``medians``: horizontal lines at the median of each box.
- ``whiskers``: the vertical lines extending to the most
extreme, non-outlier data points.
- ``caps``: the horizontal lines at the ends of the
whiskers.
- ``fliers``: points representing data that extend beyond
the whiskers (fliers).
- ``means``: points or lines representing the means.
Examples
--------
.. plot:: mpl_examples/statistics/bxp_demo.py
"""
# lists of artists to be output
whiskers = []
caps = []
boxes = []
medians = []
means = []
fliers = []
# empty list of xticklabels
datalabels = []
# Use default zorder if none specified
if zorder is None:
zorder = mlines.Line2D.zorder
zdelta = 0.1
# box properties
if patch_artist:
final_boxprops = dict(
linestyle=rcParams['boxplot.boxprops.linestyle'],
edgecolor=rcParams['boxplot.boxprops.color'],
facecolor=rcParams['patch.facecolor'],
linewidth=rcParams['boxplot.boxprops.linewidth']
)
if rcParams['_internal.classic_mode']:
final_boxprops['facecolor'] = 'white'
else:
final_boxprops = dict(
linestyle=rcParams['boxplot.boxprops.linestyle'],
color=rcParams['boxplot.boxprops.color'],
)
final_boxprops['zorder'] = zorder
if boxprops is not None:
final_boxprops.update(boxprops)
# other (cap, whisker) properties
final_whiskerprops = dict(
linestyle=rcParams['boxplot.whiskerprops.linestyle'],
linewidth=rcParams['boxplot.whiskerprops.linewidth'],
color=rcParams['boxplot.whiskerprops.color'],
)
final_capprops = dict(
linestyle=rcParams['boxplot.capprops.linestyle'],
linewidth=rcParams['boxplot.capprops.linewidth'],
color=rcParams['boxplot.capprops.color'],
)
final_capprops['zorder'] = zorder
if capprops is not None:
final_capprops.update(capprops)
final_whiskerprops['zorder'] = zorder
if whiskerprops is not None:
final_whiskerprops.update(whiskerprops)
# set up the default flier properties
final_flierprops = dict(
linestyle=rcParams['boxplot.flierprops.linestyle'],
linewidth=rcParams['boxplot.flierprops.linewidth'],
color=rcParams['boxplot.flierprops.color'],
marker=rcParams['boxplot.flierprops.marker'],
markerfacecolor=rcParams['boxplot.flierprops.markerfacecolor'],
markeredgecolor=rcParams['boxplot.flierprops.markeredgecolor'],
markersize=rcParams['boxplot.flierprops.markersize'],
)
final_flierprops['zorder'] = zorder
# flier (outlier) properties
if flierprops is not None:
final_flierprops.update(flierprops)
# median line properties
final_medianprops = dict(
linestyle=rcParams['boxplot.medianprops.linestyle'],
linewidth=rcParams['boxplot.medianprops.linewidth'],
color=rcParams['boxplot.medianprops.color'],
)
final_medianprops['zorder'] = zorder + zdelta
if medianprops is not None:
final_medianprops.update(medianprops)
# mean (line or point) properties
if meanline:
final_meanprops = dict(
linestyle=rcParams['boxplot.meanprops.linestyle'],
linewidth=rcParams['boxplot.meanprops.linewidth'],
color=rcParams['boxplot.meanprops.color'],
)
else:
final_meanprops = dict(
linestyle='',
marker=rcParams['boxplot.meanprops.marker'],
markerfacecolor=rcParams['boxplot.meanprops.markerfacecolor'],
markeredgecolor=rcParams['boxplot.meanprops.markeredgecolor'],
markersize=rcParams['boxplot.meanprops.markersize'],
)
final_meanprops['zorder'] = zorder + zdelta
if meanprops is not None:
final_meanprops.update(meanprops)
def to_vc(xs, ys):
# convert arguments to verts and codes
verts = list(zip(xs, ys))
verts.append((0, 0)) # ignored
codes = [mpath.Path.MOVETO] + \
[mpath.Path.LINETO] * (len(verts) - 2) + \
[mpath.Path.CLOSEPOLY]
return verts, codes
def patch_list(xs, ys, **kwargs):
verts, codes = to_vc(xs, ys)
path = mpath.Path(verts, codes)
patch = mpatches.PathPatch(path, **kwargs)
self.add_artist(patch)
return [patch]
# vertical or horizontal plot?
if vert:
def doplot(*args, **kwargs):
return self.plot(*args, **kwargs)
def dopatch(xs, ys, **kwargs):
return patch_list(xs, ys, **kwargs)
else:
def doplot(*args, **kwargs):
shuffled = []
for i in xrange(0, len(args), 2):
shuffled.extend([args[i + 1], args[i]])
return self.plot(*shuffled, **kwargs)
def dopatch(xs, ys, **kwargs):
xs, ys = ys, xs # flip X, Y
return patch_list(xs, ys, **kwargs)
# input validation
N = len(bxpstats)
datashape_message = ("List of boxplot statistics and `{0}` "
"values must have same the length")
# check position
if positions is None:
positions = list(xrange(1, N + 1))
elif len(positions) != N:
raise ValueError(datashape_message.format("positions"))
# width
if widths is None:
distance = max(positions) - min(positions)
widths = [min(0.15 * max(distance, 1.0), 0.5)] * N
elif np.isscalar(widths):
widths = [widths] * N
elif len(widths) != N:
raise ValueError(datashape_message.format("widths"))
# check and save the `hold` state of the current axes
if not self._hold:
self.cla()
holdStatus = self._hold
for pos, width, stats in zip(positions, widths, bxpstats):
# try to find a new label
datalabels.append(stats.get('label', pos))
# whisker coords
whisker_x = np.ones(2) * pos
whiskerlo_y = np.array([stats['q1'], stats['whislo']])
whiskerhi_y = np.array([stats['q3'], stats['whishi']])
# cap coords
cap_left = pos - width * 0.25
cap_right = pos + width * 0.25
cap_x = np.array([cap_left, cap_right])
cap_lo = np.ones(2) * stats['whislo']
cap_hi = np.ones(2) * stats['whishi']
# box and median coords
box_left = pos - width * 0.5
box_right = pos + width * 0.5
med_y = [stats['med'], stats['med']]
# notched boxes
if shownotches:
box_x = [box_left, box_right, box_right, cap_right, box_right,
box_right, box_left, box_left, cap_left, box_left,
box_left]
box_y = [stats['q1'], stats['q1'], stats['cilo'],
stats['med'], stats['cihi'], stats['q3'],
stats['q3'], stats['cihi'], stats['med'],
stats['cilo'], stats['q1']]
med_x = cap_x
# plain boxes
else:
box_x = [box_left, box_right, box_right, box_left, box_left]
box_y = [stats['q1'], stats['q1'], stats['q3'], stats['q3'],
stats['q1']]
med_x = [box_left, box_right]
# maybe draw the box:
if showbox:
if patch_artist:
boxes.extend(dopatch(box_x, box_y, **final_boxprops))
else:
boxes.extend(doplot(box_x, box_y, **final_boxprops))
# draw the whiskers
whiskers.extend(doplot(
whisker_x, whiskerlo_y, **final_whiskerprops
))
whiskers.extend(doplot(
whisker_x, whiskerhi_y, **final_whiskerprops
))
# maybe draw the caps:
if showcaps:
caps.extend(doplot(cap_x, cap_lo, **final_capprops))
caps.extend(doplot(cap_x, cap_hi, **final_capprops))
# draw the medians
medians.extend(doplot(med_x, med_y, **final_medianprops))
# maybe draw the means
if showmeans:
if meanline:
means.extend(doplot(
[box_left, box_right], [stats['mean'], stats['mean']],
**final_meanprops
))
else:
means.extend(doplot(
[pos], [stats['mean']], **final_meanprops
))
# maybe draw the fliers
if showfliers:
# fliers coords
flier_x = np.ones(len(stats['fliers'])) * pos
flier_y = stats['fliers']
fliers.extend(doplot(
flier_x, flier_y, **final_flierprops
))
# fix our axes/ticks up a little
if vert:
setticks = self.set_xticks
setlim = self.set_xlim
setlabels = self.set_xticklabels
else:
setticks = self.set_yticks
setlim = self.set_ylim
setlabels = self.set_yticklabels
if manage_xticks:
newlimits = min(positions) - 0.5, max(positions) + 0.5
setlim(newlimits)
setticks(positions)
setlabels(datalabels)
# reset hold status
self._hold = holdStatus
return dict(whiskers=whiskers, caps=caps, boxes=boxes,
medians=medians, fliers=fliers, means=means)
@unpack_labeled_data(replace_names=["x", "y", "s", "linewidths",
"edgecolors", "c", 'facecolor',
'facecolors', 'color'],
label_namer="y")
def scatter(self, x, y, s=None, c=None, marker=None, cmap=None, norm=None,
vmin=None, vmax=None, alpha=None, linewidths=None,
verts=None, edgecolors=None,
**kwargs):
"""
Make a scatter plot of `x` vs `y`
Marker size is scaled by `s` and marker color is mapped to `c`
Parameters
----------
x, y : array_like, shape (n, )
Input data
s : scalar or array_like, shape (n, ), optional
size in points^2. Default is `rcParams['lines.markersize'] ** 2`.
c : color, sequence, or sequence of color, optional, default: 'b'
`c` can be a single color format string, or a sequence of color
specifications of length `N`, or a sequence of `N` numbers to be
mapped to colors using the `cmap` and `norm` specified via kwargs
(see below). Note that `c` should not be a single numeric RGB or
RGBA sequence because that is indistinguishable from an array of
values to be colormapped. `c` can be a 2-D array in which the
rows are RGB or RGBA, however, including the case of a single
row to specify the same color for all points.
marker : `~matplotlib.markers.MarkerStyle`, optional, default: 'o'
See `~matplotlib.markers` for more information on the different
styles of markers scatter supports. `marker` can be either
an instance of the class or the text shorthand for a particular
marker.
cmap : `~matplotlib.colors.Colormap`, optional, default: None
A `~matplotlib.colors.Colormap` instance or registered name.
`cmap` is only used if `c` is an array of floats. If None,
defaults to rc `image.cmap`.
norm : `~matplotlib.colors.Normalize`, optional, default: None
A `~matplotlib.colors.Normalize` instance is used to scale
luminance data to 0, 1. `norm` is only used if `c` is an array of
floats. If `None`, use the default :func:`normalize`.
vmin, vmax : scalar, optional, default: None
`vmin` and `vmax` are used in conjunction with `norm` to normalize
luminance data. If either are `None`, the min and max of the
color array is used. Note if you pass a `norm` instance, your
settings for `vmin` and `vmax` will be ignored.
alpha : scalar, optional, default: None
The alpha blending value, between 0 (transparent) and 1 (opaque)
linewidths : scalar or array_like, optional, default: None
If None, defaults to (lines.linewidth,).
verts : sequence of (x, y), optional
If `marker` is None, these vertices will be used to
construct the marker. The center of the marker is located
at (0,0) in normalized units. The overall marker is rescaled
by ``s``.
edgecolors : color or sequence of color, optional, default: None
If None, defaults to 'face'
If 'face', the edge color will always be the same as
the face color.
If it is 'none', the patch boundary will not
be drawn.
For non-filled markers, the `edgecolors` kwarg
is ignored and forced to 'face' internally.
Returns
-------
paths : `~matplotlib.collections.PathCollection`
Other parameters
----------------
kwargs : `~matplotlib.collections.Collection` properties
See Also
--------
plot : to plot scatter plots when markers are identical in size and
color
Notes
-----
* The `plot` function will be faster for scatterplots where markers
don't vary in size or color.
* Any or all of `x`, `y`, `s`, and `c` may be masked arrays, in which
case all masks will be combined and only unmasked points will be
plotted.
Fundamentally, scatter works with 1-D arrays; `x`, `y`, `s`, and `c`
may be input as 2-D arrays, but within scatter they will be
flattened. The exception is `c`, which will be flattened only if its
size matches the size of `x` and `y`.
Examples
--------
.. plot:: mpl_examples/shapes_and_collections/scatter_demo.py
"""
if not self._hold:
self.cla()
# Process **kwargs to handle aliases, conflicts with explicit kwargs:
facecolors = None
edgecolors = kwargs.pop('edgecolor', edgecolors)
fc = kwargs.pop('facecolors', None)
fc = kwargs.pop('facecolor', fc)
if fc is not None:
facecolors = fc
co = kwargs.pop('color', None)
if co is not None:
try:
mcolors.to_rgba_array(co)
except ValueError:
raise ValueError("'color' kwarg must be an mpl color"
" spec or sequence of color specs.\n"
"For a sequence of values to be"
" color-mapped, use the 'c' kwarg instead.")
if edgecolors is None:
edgecolors = co
if facecolors is None:
facecolors = co
if c is not None:
raise ValueError("Supply a 'c' kwarg or a 'color' kwarg"
" but not both; they differ but"
" their functionalities overlap.")
if c is None:
if facecolors is not None:
c = facecolors
else:
if rcParams['_internal.classic_mode']:
c = 'b' # The original default
else:
c = self._get_patches_for_fill.get_next_color()
c_none = True
else:
c_none = False
if edgecolors is None and not rcParams['_internal.classic_mode']:
edgecolors = 'face'
self._process_unit_info(xdata=x, ydata=y, kwargs=kwargs)
x = self.convert_xunits(x)
y = self.convert_yunits(y)
# np.ma.ravel yields an ndarray, not a masked array,
# unless its argument is a masked array.
x = np.ma.ravel(x)
y = np.ma.ravel(y)
if x.size != y.size:
raise ValueError("x and y must be the same size")
if s is None:
if rcParams['_internal.classic_mode']:
s = 20
else:
s = rcParams['lines.markersize'] ** 2.0
s = np.ma.ravel(s) # This doesn't have to match x, y in size.
# After this block, c_array will be None unless
# c is an array for mapping. The potential ambiguity
# with a sequence of 3 or 4 numbers is resolved in
# favor of mapping, not rgb or rgba.
if c_none or co is not None:
c_array = None
else:
try:
c_array = np.asanyarray(c, dtype=float)
if c_array.size == x.size:
c = np.ma.ravel(c_array)
else:
# Wrong size; it must not be intended for mapping.
c_array = None
except ValueError:
# Failed to make a floating-point array; c must be color specs.
c_array = None
if c_array is None:
colors = c # must be acceptable as PathCollection facecolors
else:
colors = None # use cmap, norm after collection is created
# Anything in maskargs will be unchanged unless it is the same length
# as x:
maskargs = x, y, s, c, colors, edgecolors, linewidths
x, y, s, c, colors, edgecolors, linewidths =\
cbook.delete_masked_points(*maskargs)
scales = s # Renamed for readability below.
# to be API compatible
if marker is None and not (verts is None):
marker = (verts, 0)
verts = None
# load default marker from rcParams
if marker is None:
marker = rcParams['scatter.marker']
if isinstance(marker, mmarkers.MarkerStyle):
marker_obj = marker
else:
marker_obj = mmarkers.MarkerStyle(marker)
path = marker_obj.get_path().transformed(
marker_obj.get_transform())
if not marker_obj.is_filled():
edgecolors = 'face'
linewidths = rcParams['lines.linewidth']
offsets = np.dstack((x, y))
collection = mcoll.PathCollection(
(path,), scales,
facecolors=colors,
edgecolors=edgecolors,
linewidths=linewidths,
offsets=offsets,
transOffset=kwargs.pop('transform', self.transData),
alpha=alpha
)
collection.set_transform(mtransforms.IdentityTransform())
collection.update(kwargs)
if colors is None:
if norm is not None and not isinstance(norm, mcolors.Normalize):
msg = "'norm' must be an instance of 'mcolors.Normalize'"
raise ValueError(msg)
collection.set_array(np.asarray(c))
collection.set_cmap(cmap)
collection.set_norm(norm)
if vmin is not None or vmax is not None:
collection.set_clim(vmin, vmax)
else:
collection.autoscale_None()
# Classic mode only:
# ensure there are margins to allow for the
# finite size of the symbols. In v2.x, margins
# are present by default, so we disable this
# scatter-specific override.
if rcParams['_internal.classic_mode']:
if self._xmargin < 0.05 and x.size > 0:
self.set_xmargin(0.05)
if self._ymargin < 0.05 and x.size > 0:
self.set_ymargin(0.05)
self.add_collection(collection)
self.autoscale_view()
return collection
@unpack_labeled_data(replace_names=["x", "y"], label_namer="y")
@docstring.dedent_interpd
def hexbin(self, x, y, C=None, gridsize=100, bins=None,
xscale='linear', yscale='linear', extent=None,
cmap=None, norm=None, vmin=None, vmax=None,
alpha=None, linewidths=None, edgecolors='none',
reduce_C_function=np.mean, mincnt=None, marginals=False,
**kwargs):
"""
Make a hexagonal binning plot.
Make a hexagonal binning plot of *x* versus *y*, where *x*,
*y* are 1-D sequences of the same length, *N*. If *C* is *None*
(the default), this is a histogram of the number of occurences
of the observations at (x[i],y[i]).
If *C* is specified, it specifies values at the coordinate
(x[i],y[i]). These values are accumulated for each hexagonal
bin and then reduced according to *reduce_C_function*, which
defaults to numpy's mean function (np.mean). (If *C* is
specified, it must also be a 1-D sequence of the same length
as *x* and *y*.)
Parameters
----------
x, y : array or masked array
C : array or masked array, optional, default is *None*
gridsize : int or (int, int), optional, default is 100
The number of hexagons in the *x*-direction, default is
100. The corresponding number of hexagons in the
*y*-direction is chosen such that the hexagons are
approximately regular. Alternatively, gridsize can be a
tuple with two elements specifying the number of hexagons
in the *x*-direction and the *y*-direction.
bins : {'log'} or int or sequence, optional, default is *None*
If *None*, no binning is applied; the color of each hexagon
directly corresponds to its count value.
If 'log', use a logarithmic scale for the color
map. Internally, :math:`log_{10}(i+1)` is used to
determine the hexagon color.
If an integer, divide the counts in the specified number
of bins, and color the hexagons accordingly.
If a sequence of values, the values of the lower bound of
the bins to be used.
xscale : {'linear', 'log'}, optional, default is 'linear'
Use a linear or log10 scale on the horizontal axis.
yscale : {'linear', 'log'}, optional, default is 'linear'
Use a linear or log10 scale on the vertical axis.
mincnt : int > 0, optional, default is *None*
If not *None*, only display cells with more than *mincnt*
number of points in the cell
marginals : bool, optional, default is *False*
if marginals is *True*, plot the marginal density as
colormapped rectagles along the bottom of the x-axis and
left of the y-axis
extent : scalar, optional, default is *None*
The limits of the bins. The default assigns the limits
based on *gridsize*, *x*, *y*, *xscale* and *yscale*.
If *xscale* or *yscale* is set to 'log', the limits are
expected to be the exponent for a power of 10. E.g. for
x-limits of 1 and 50 in 'linear' scale and y-limits
of 10 and 1000 in 'log' scale, enter (1, 50, 1, 3).
Order of scalars is (left, right, bottom, top).
Other parameters
----------------
cmap : object, optional, default is *None*
a :class:`matplotlib.colors.Colormap` instance. If *None*,
defaults to rc ``image.cmap``.
norm : object, optional, default is *None*
:class:`matplotlib.colors.Normalize` instance is used to
scale luminance data to 0,1.
vmin, vmax : scalar, optional, default is *None*
*vmin* and *vmax* are used in conjunction with *norm* to
normalize luminance data. If *None*, the min and max of the
color array *C* are used. Note if you pass a norm instance
your settings for *vmin* and *vmax* will be ignored.
alpha : scalar between 0 and 1, optional, default is *None*
the alpha value for the patches
linewidths : scalar, optional, default is *None*
If *None*, defaults to 1.0.
edgecolors : {'none'} or mpl color, optional, default is 'none'
If 'none', draws the edges in the same color as the fill color.
This is the default, as it avoids unsightly unpainted pixels
between the hexagons.
If *None*, draws outlines in the default color.
If a matplotlib color arg, draws outlines in the specified color.
Returns
-------
object
a :class:`~matplotlib.collections.PolyCollection` instance; use
:meth:`~matplotlib.collections.PolyCollection.get_array` on
this :class:`~matplotlib.collections.PolyCollection` to get
the counts in each hexagon.
If *marginals* is *True*, horizontal
bar and vertical bar (both PolyCollections) will be attached
to the return collection as attributes *hbar* and *vbar*.
Examples
--------
.. plot:: mpl_examples/pylab_examples/hexbin_demo.py
Notes
--------
The standard descriptions of all the
:class:`~matplotlib.collections.Collection` parameters:
%(Collection)s
"""
if not self._hold:
self.cla()
self._process_unit_info(xdata=x, ydata=y, kwargs=kwargs)
x, y, C = cbook.delete_masked_points(x, y, C)
# Set the size of the hexagon grid
if iterable(gridsize):
nx, ny = gridsize
else:
nx = gridsize
ny = int(nx / math.sqrt(3))
# Count the number of data in each hexagon
x = np.array(x, float)
y = np.array(y, float)
if xscale == 'log':
if np.any(x <= 0.0):
raise ValueError("x contains non-positive values, so can not"
" be log-scaled")
x = np.log10(x)
if yscale == 'log':
if np.any(y <= 0.0):
raise ValueError("y contains non-positive values, so can not"
" be log-scaled")
y = np.log10(y)
if extent is not None:
xmin, xmax, ymin, ymax = extent
else:
xmin, xmax = (np.amin(x), np.amax(x)) if len(x) else (0, 1)
ymin, ymax = (np.amin(y), np.amax(y)) if len(y) else (0, 1)
# to avoid issues with singular data, expand the min/max pairs
xmin, xmax = mtrans.nonsingular(xmin, xmax, expander=0.1)
ymin, ymax = mtrans.nonsingular(ymin, ymax, expander=0.1)
# In the x-direction, the hexagons exactly cover the region from
# xmin to xmax. Need some padding to avoid roundoff errors.
padding = 1.e-9 * (xmax - xmin)
xmin -= padding
xmax += padding
sx = (xmax - xmin) / nx
sy = (ymax - ymin) / ny
if marginals:
xorig = x.copy()
yorig = y.copy()
x = (x - xmin) / sx
y = (y - ymin) / sy
ix1 = np.round(x).astype(int)
iy1 = np.round(y).astype(int)
ix2 = np.floor(x).astype(int)
iy2 = np.floor(y).astype(int)
nx1 = nx + 1
ny1 = ny + 1
nx2 = nx
ny2 = ny
n = nx1 * ny1 + nx2 * ny2
d1 = (x - ix1) ** 2 + 3.0 * (y - iy1) ** 2
d2 = (x - ix2 - 0.5) ** 2 + 3.0 * (y - iy2 - 0.5) ** 2
bdist = (d1 < d2)
if C is None:
accum = np.zeros(n)
# Create appropriate views into "accum" array.
lattice1 = accum[:nx1 * ny1]
lattice2 = accum[nx1 * ny1:]
lattice1.shape = (nx1, ny1)
lattice2.shape = (nx2, ny2)
for i in xrange(len(x)):
if bdist[i]:
if ((ix1[i] >= 0) and (ix1[i] < nx1) and
(iy1[i] >= 0) and (iy1[i] < ny1)):
lattice1[ix1[i], iy1[i]] += 1
else:
if ((ix2[i] >= 0) and (ix2[i] < nx2) and
(iy2[i] >= 0) and (iy2[i] < ny2)):
lattice2[ix2[i], iy2[i]] += 1
# threshold
if mincnt is not None:
for i in xrange(nx1):
for j in xrange(ny1):
if lattice1[i, j] < mincnt:
lattice1[i, j] = np.nan
for i in xrange(nx2):
for j in xrange(ny2):
if lattice2[i, j] < mincnt:
lattice2[i, j] = np.nan
accum = np.hstack((lattice1.astype(float).ravel(),
lattice2.astype(float).ravel()))
good_idxs = ~np.isnan(accum)
else:
if mincnt is None:
mincnt = 0
# create accumulation arrays
lattice1 = np.empty((nx1, ny1), dtype=object)
for i in xrange(nx1):
for j in xrange(ny1):
lattice1[i, j] = []
lattice2 = np.empty((nx2, ny2), dtype=object)
for i in xrange(nx2):
for j in xrange(ny2):
lattice2[i, j] = []
for i in xrange(len(x)):
if bdist[i]:
if ((ix1[i] >= 0) and (ix1[i] < nx1) and
(iy1[i] >= 0) and (iy1[i] < ny1)):
lattice1[ix1[i], iy1[i]].append(C[i])
else:
if ((ix2[i] >= 0) and (ix2[i] < nx2) and
(iy2[i] >= 0) and (iy2[i] < ny2)):
lattice2[ix2[i], iy2[i]].append(C[i])
for i in xrange(nx1):
for j in xrange(ny1):
vals = lattice1[i, j]
if len(vals) > mincnt:
lattice1[i, j] = reduce_C_function(vals)
else:
lattice1[i, j] = np.nan
for i in xrange(nx2):
for j in xrange(ny2):
vals = lattice2[i, j]
if len(vals) > mincnt:
lattice2[i, j] = reduce_C_function(vals)
else:
lattice2[i, j] = np.nan
accum = np.hstack((lattice1.astype(float).ravel(),
lattice2.astype(float).ravel()))
good_idxs = ~np.isnan(accum)
offsets = np.zeros((n, 2), float)
offsets[:nx1 * ny1, 0] = np.repeat(np.arange(nx1), ny1)
offsets[:nx1 * ny1, 1] = np.tile(np.arange(ny1), nx1)
offsets[nx1 * ny1:, 0] = np.repeat(np.arange(nx2) + 0.5, ny2)
offsets[nx1 * ny1:, 1] = np.tile(np.arange(ny2), nx2) + 0.5
offsets[:, 0] *= sx
offsets[:, 1] *= sy
offsets[:, 0] += xmin
offsets[:, 1] += ymin
# remove accumulation bins with no data
offsets = offsets[good_idxs, :]
accum = accum[good_idxs]
polygon = np.zeros((6, 2), float)
polygon[:, 0] = sx * np.array([0.5, 0.5, 0.0, -0.5, -0.5, 0.0])
polygon[:, 1] = sy * np.array([-0.5, 0.5, 1.0, 0.5, -0.5, -1.0]) / 3.0
if edgecolors == 'none':
edgecolors = 'face'
if linewidths is None:
linewidths = [1.0]
if xscale == 'log' or yscale == 'log':
polygons = np.expand_dims(polygon, 0) + np.expand_dims(offsets, 1)
if xscale == 'log':
polygons[:, :, 0] = 10.0 ** polygons[:, :, 0]
xmin = 10.0 ** xmin
xmax = 10.0 ** xmax
self.set_xscale(xscale)
if yscale == 'log':
polygons[:, :, 1] = 10.0 ** polygons[:, :, 1]
ymin = 10.0 ** ymin
ymax = 10.0 ** ymax
self.set_yscale(yscale)
collection = mcoll.PolyCollection(
polygons,
edgecolors=edgecolors,
linewidths=linewidths,
)
else:
collection = mcoll.PolyCollection(
[polygon],
edgecolors=edgecolors,
linewidths=linewidths,
offsets=offsets,
transOffset=mtransforms.IdentityTransform(),
offset_position="data"
)
if isinstance(norm, mcolors.LogNorm):
if (accum == 0).any():
# make sure we have not zeros
accum += 1
# autoscale the norm with curren accum values if it hasn't
# been set
if norm is not None:
if norm.vmin is None and norm.vmax is None:
norm.autoscale(accum)
# Transform accum if needed
if bins == 'log':
accum = np.log10(accum + 1)
elif bins is not None:
if not iterable(bins):
minimum, maximum = min(accum), max(accum)
bins -= 1 # one less edge than bins
bins = minimum + (maximum - minimum) * np.arange(bins) / bins
bins = np.sort(bins)
accum = bins.searchsorted(accum)
if norm is not None and not isinstance(norm, mcolors.Normalize):
msg = "'norm' must be an instance of 'mcolors.Normalize'"
raise ValueError(msg)
collection.set_array(accum)
collection.set_cmap(cmap)
collection.set_norm(norm)
collection.set_alpha(alpha)
collection.update(kwargs)
if vmin is not None or vmax is not None:
collection.set_clim(vmin, vmax)
else:
collection.autoscale_None()
corners = ((xmin, ymin), (xmax, ymax))
self.update_datalim(corners)
collection.sticky_edges.x[:] = [xmin, xmax]
collection.sticky_edges.y[:] = [ymin, ymax]
self.autoscale_view(tight=True)
# add the collection last
self.add_collection(collection, autolim=False)
if not marginals:
return collection
if C is None:
C = np.ones(len(x))
def coarse_bin(x, y, coarse):
ind = coarse.searchsorted(x).clip(0, len(coarse) - 1)
mus = np.zeros(len(coarse))
for i in range(len(coarse)):
yi = y[ind == i]
if len(yi) > 0:
mu = reduce_C_function(yi)
else:
mu = np.nan
mus[i] = mu
return mus
coarse = np.linspace(xmin, xmax, gridsize)
xcoarse = coarse_bin(xorig, C, coarse)
valid = ~np.isnan(xcoarse)
verts, values = [], []
for i, val in enumerate(xcoarse):
thismin = coarse[i]
if i < len(coarse) - 1:
thismax = coarse[i + 1]
else:
thismax = thismin + np.diff(coarse)[-1]
if not valid[i]:
continue
verts.append([(thismin, 0),
(thismin, 0.05),
(thismax, 0.05),
(thismax, 0)])
values.append(val)
values = np.array(values)
trans = self.get_xaxis_transform(which='grid')
hbar = mcoll.PolyCollection(verts, transform=trans, edgecolors='face')
hbar.set_array(values)
hbar.set_cmap(cmap)
hbar.set_norm(norm)
hbar.set_alpha(alpha)
hbar.update(kwargs)
self.add_collection(hbar, autolim=False)
coarse = np.linspace(ymin, ymax, gridsize)
ycoarse = coarse_bin(yorig, C, coarse)
valid = ~np.isnan(ycoarse)
verts, values = [], []
for i, val in enumerate(ycoarse):
thismin = coarse[i]
if i < len(coarse) - 1:
thismax = coarse[i + 1]
else:
thismax = thismin + np.diff(coarse)[-1]
if not valid[i]:
continue
verts.append([(0, thismin), (0.0, thismax),
(0.05, thismax), (0.05, thismin)])
values.append(val)
values = np.array(values)
trans = self.get_yaxis_transform(which='grid')
vbar = mcoll.PolyCollection(verts, transform=trans, edgecolors='face')
vbar.set_array(values)
vbar.set_cmap(cmap)
vbar.set_norm(norm)
vbar.set_alpha(alpha)
vbar.update(kwargs)
self.add_collection(vbar, autolim=False)
collection.hbar = hbar
collection.vbar = vbar
def on_changed(collection):
hbar.set_cmap(collection.get_cmap())
hbar.set_clim(collection.get_clim())
vbar.set_cmap(collection.get_cmap())
vbar.set_clim(collection.get_clim())
collection.callbacksSM.connect('changed', on_changed)
return collection
@docstring.dedent_interpd
def arrow(self, x, y, dx, dy, **kwargs):
"""
Add an arrow to the axes.
Draws arrow on specified axis from (`x`, `y`) to (`x` + `dx`,
`y` + `dy`). Uses FancyArrow patch to construct the arrow.
Parameters
----------
x : float
X-coordinate of the arrow base
y : float
Y-coordinate of the arrow base
dx : float
Length of arrow along x-coordinate
dy : float
Length of arrow along y-coordinate
Returns
-------
a : FancyArrow
patches.FancyArrow object
Other Parameters
-----------------
Optional kwargs (inherited from FancyArrow patch) control the arrow
construction and properties:
%(FancyArrow)s
Notes
-----
The resulting arrow is affected by the axes aspect ratio and limits.
This may produce an arrow whose head is not square with its stem. To
create an arrow whose head is square with its stem, use
:meth:`annotate` for example::
ax.annotate("", xy=(0.5, 0.5), xytext=(0, 0),
arrowprops=dict(arrowstyle="->"))
Examples
--------
.. plot:: mpl_examples/pylab_examples/arrow_demo.py
"""
# Strip away units for the underlying patch since units
# do not make sense to most patch-like code
x = self.convert_xunits(x)
y = self.convert_yunits(y)
dx = self.convert_xunits(dx)
dy = self.convert_yunits(dy)
a = mpatches.FancyArrow(x, y, dx, dy, **kwargs)
self.add_artist(a)
return a
def quiverkey(self, *args, **kw):
qk = mquiver.QuiverKey(*args, **kw)
self.add_artist(qk)
return qk
quiverkey.__doc__ = mquiver.QuiverKey.quiverkey_doc
# args can by a combination if X, Y, U, V, C and all should be replaced
@unpack_labeled_data(replace_all_args=True, label_namer=None)
def quiver(self, *args, **kw):
if not self._hold:
self.cla()
q = mquiver.Quiver(self, *args, **kw)
self.add_collection(q, autolim=True)
self.autoscale_view()
return q
quiver.__doc__ = mquiver.Quiver.quiver_doc
# args can by either Y or y1,y2,... and all should be replaced
@unpack_labeled_data(replace_all_args=True, label_namer=None)
def stackplot(self, x, *args, **kwargs):
return mstack.stackplot(self, x, *args, **kwargs)
stackplot.__doc__ = mstack.stackplot.__doc__
@unpack_labeled_data(replace_names=["x", "y", "u", "v", "start_points"],
label_namer=None)
def streamplot(self, x, y, u, v, density=1, linewidth=None, color=None,
cmap=None, norm=None, arrowsize=1, arrowstyle='-|>',
minlength=0.1, transform=None, zorder=None,
start_points=None):
if not self._hold:
self.cla()
stream_container = mstream.streamplot(self, x, y, u, v,
density=density,
linewidth=linewidth,
color=color,
cmap=cmap,
norm=norm,
arrowsize=arrowsize,
arrowstyle=arrowstyle,
minlength=minlength,
start_points=start_points,
transform=transform,
zorder=zorder)
return stream_container
streamplot.__doc__ = mstream.streamplot.__doc__
# args can be some combination of X, Y, U, V, C and all should be replaced
@unpack_labeled_data(replace_all_args=True, label_namer=None)
@docstring.dedent_interpd
def barbs(self, *args, **kw):
"""
%(barbs_doc)s
**Example:**
.. plot:: mpl_examples/pylab_examples/barb_demo.py
"""
if not self._hold:
self.cla()
b = mquiver.Barbs(self, *args, **kw)
self.add_collection(b, autolim=True)
self.autoscale_view()
return b
@unpack_labeled_data(replace_names=["x", "y"], label_namer=None,
positional_parameter_names=["x", "y", "c"])
def fill(self, *args, **kwargs):
"""
Plot filled polygons.
Parameters
----------
args : a variable length argument
It allowing for multiple
*x*, *y* pairs with an optional color format string; see
:func:`~matplotlib.pyplot.plot` for details on the argument
parsing. For example, each of the following is legal::
ax.fill(x, y)
ax.fill(x, y, "b")
ax.fill(x, y, "b", x, y, "r")
An arbitrary number of *x*, *y*, *color* groups can be specified::
ax.fill(x1, y1, 'g', x2, y2, 'r')
Returns
-------
a list of :class:`~matplotlib.patches.Patch`
Other Parameters
----------------
kwargs : :class:`~matplotlib.patches.Polygon` properties
Notes
-----
The same color strings that :func:`~matplotlib.pyplot.plot`
supports are supported by the fill format string.
If you would like to fill below a curve, e.g., shade a region
between 0 and *y* along *x*, use :meth:`fill_between`
Examples
--------
.. plot:: mpl_examples/lines_bars_and_markers/fill_demo.py
"""
if not self._hold:
self.cla()
kwargs = cbook.normalize_kwargs(kwargs, _alias_map)
patches = []
for poly in self._get_patches_for_fill(*args, **kwargs):
self.add_patch(poly)
patches.append(poly)
self.autoscale_view()
return patches
@unpack_labeled_data(replace_names=["x", "y1", "y2", "where"],
label_namer=None)
@docstring.dedent_interpd
def fill_between(self, x, y1, y2=0, where=None, interpolate=False,
step=None,
**kwargs):
"""
Make filled polygons between two curves.
Create a :class:`~matplotlib.collections.PolyCollection`
filling the regions between *y1* and *y2* where
``where==True``
Parameters
----------
x : array
An N-length array of the x data
y1 : array
An N-length array (or scalar) of the y data
y2 : array
An N-length array (or scalar) of the y data
where : array, optional
If `None`, default to fill between everywhere. If not `None`,
it is an N-length numpy boolean array and the fill will
only happen over the regions where ``where==True``.
interpolate : bool, optional
If `True`, interpolate between the two lines to find the
precise point of intersection. Otherwise, the start and
end points of the filled region will only occur on explicit
values in the *x* array.
step : {'pre', 'post', 'mid'}, optional
If not None, fill with step logic.
Notes
-----
Additional Keyword args passed on to the
:class:`~matplotlib.collections.PolyCollection`.
kwargs control the :class:`~matplotlib.patches.Polygon` properties:
%(PolyCollection)s
Examples
--------
.. plot:: mpl_examples/pylab_examples/fill_between_demo.py
See Also
--------
:meth:`fill_betweenx`
for filling between two sets of x-values
"""
if not rcParams['_internal.classic_mode']:
color_aliases = mcoll._color_aliases
kwargs = cbook.normalize_kwargs(kwargs, color_aliases)
if not any(c in kwargs for c in ('color', 'facecolors')):
fc = self._get_patches_for_fill.get_next_color()
kwargs['facecolors'] = fc
# Handle united data, such as dates
self._process_unit_info(xdata=x, ydata=y1, kwargs=kwargs)
self._process_unit_info(ydata=y2)
# Convert the arrays so we can work with them
x = ma.masked_invalid(self.convert_xunits(x))
y1 = ma.masked_invalid(self.convert_yunits(y1))
y2 = ma.masked_invalid(self.convert_yunits(y2))
if y1.ndim == 0:
y1 = np.ones_like(x) * y1
if y2.ndim == 0:
y2 = np.ones_like(x) * y2
if where is None:
where = np.ones(len(x), np.bool)
else:
where = np.asarray(where, np.bool)
if not (x.shape == y1.shape == y2.shape == where.shape):
raise ValueError("Argument dimensions are incompatible")
mask = reduce(ma.mask_or, [ma.getmask(a) for a in (x, y1, y2)])
if mask is not ma.nomask:
where &= ~mask
polys = []
for ind0, ind1 in mlab.contiguous_regions(where):
xslice = x[ind0:ind1]
y1slice = y1[ind0:ind1]
y2slice = y2[ind0:ind1]
if step is not None:
step_func = STEP_LOOKUP_MAP[step]
xslice, y1slice, y2slice = step_func(xslice, y1slice, y2slice)
if not len(xslice):
continue
N = len(xslice)
X = np.zeros((2 * N + 2, 2), np.float)
if interpolate:
def get_interp_point(ind):
im1 = max(ind - 1, 0)
x_values = x[im1:ind + 1]
diff_values = y1[im1:ind + 1] - y2[im1:ind + 1]
y1_values = y1[im1:ind + 1]
if len(diff_values) == 2:
if np.ma.is_masked(diff_values[1]):
return x[im1], y1[im1]
elif np.ma.is_masked(diff_values[0]):
return x[ind], y1[ind]
diff_order = diff_values.argsort()
diff_root_x = np.interp(
0, diff_values[diff_order], x_values[diff_order])
diff_root_y = np.interp(diff_root_x, x_values, y1_values)
return diff_root_x, diff_root_y
start = get_interp_point(ind0)
end = get_interp_point(ind1)
else:
# the purpose of the next two lines is for when y2 is a
# scalar like 0 and we want the fill to go all the way
# down to 0 even if none of the y1 sample points do
start = xslice[0], y2slice[0]
end = xslice[-1], y2slice[-1]
X[0] = start
X[N + 1] = end
X[1:N + 1, 0] = xslice
X[1:N + 1, 1] = y1slice
X[N + 2:, 0] = xslice[::-1]
X[N + 2:, 1] = y2slice[::-1]
polys.append(X)
collection = mcoll.PolyCollection(polys, **kwargs)
# now update the datalim and autoscale
XY1 = np.array([x[where], y1[where]]).T
XY2 = np.array([x[where], y2[where]]).T
self.dataLim.update_from_data_xy(XY1, self.ignore_existing_data_limits,
updatex=True, updatey=True)
self.ignore_existing_data_limits = False
self.dataLim.update_from_data_xy(XY2, self.ignore_existing_data_limits,
updatex=False, updatey=True)
self.add_collection(collection, autolim=False)
self.autoscale_view()
return collection
@unpack_labeled_data(replace_names=["y", "x1", "x2", "where"],
label_namer=None)
@docstring.dedent_interpd
def fill_betweenx(self, y, x1, x2=0, where=None,
step=None, **kwargs):
"""
Make filled polygons between two horizontal curves.
Create a :class:`~matplotlib.collections.PolyCollection`
filling the regions between *x1* and *x2* where
``where==True``
Parameters
----------
y : array
An N-length array of the y data
x1 : array
An N-length array (or scalar) of the x data
x2 : array, optional
An N-length array (or scalar) of the x data
where : array, optional
If *None*, default to fill between everywhere. If not *None*,
it is a N length numpy boolean array and the fill will
only happen over the regions where ``where==True``
step : {'pre', 'post', 'mid'}, optional
If not None, fill with step logic.
Notes
-----
keyword args passed on to the
:class:`~matplotlib.collections.PolyCollection`
kwargs control the :class:`~matplotlib.patches.Polygon` properties:
%(PolyCollection)s
Examples
--------
.. plot:: mpl_examples/pylab_examples/fill_betweenx_demo.py
See Also
--------
:meth:`fill_between`
for filling between two sets of y-values
"""
if not rcParams['_internal.classic_mode']:
color_aliases = mcoll._color_aliases
kwargs = cbook.normalize_kwargs(kwargs, color_aliases)
if not any(c in kwargs for c in ('color', 'facecolors')):
fc = self._get_patches_for_fill.get_next_color()
kwargs['facecolors'] = fc
# Handle united data, such as dates
self._process_unit_info(ydata=y, xdata=x1, kwargs=kwargs)
self._process_unit_info(xdata=x2)
# Convert the arrays so we can work with them
y = ma.masked_invalid(self.convert_yunits(y))
x1 = ma.masked_invalid(self.convert_xunits(x1))
x2 = ma.masked_invalid(self.convert_xunits(x2))
if x1.ndim == 0:
x1 = np.ones_like(y) * x1
if x2.ndim == 0:
x2 = np.ones_like(y) * x2
if where is None:
where = np.ones(len(y), np.bool)
else:
where = np.asarray(where, np.bool)
if not (y.shape == x1.shape == x2.shape == where.shape):
raise ValueError("Argument dimensions are incompatible")
mask = reduce(ma.mask_or, [ma.getmask(a) for a in (y, x1, x2)])
if mask is not ma.nomask:
where &= ~mask
polys = []
for ind0, ind1 in mlab.contiguous_regions(where):
yslice = y[ind0:ind1]
x1slice = x1[ind0:ind1]
x2slice = x2[ind0:ind1]
if step is not None:
step_func = STEP_LOOKUP_MAP[step]
yslice, x1slice, x2slice = step_func(yslice, x1slice, x2slice)
if not len(yslice):
continue
N = len(yslice)
Y = np.zeros((2 * N + 2, 2), np.float)
# the purpose of the next two lines is for when x2 is a
# scalar like 0 and we want the fill to go all the way
# down to 0 even if none of the x1 sample points do
Y[0] = x2slice[0], yslice[0]
Y[N + 1] = x2slice[-1], yslice[-1]
Y[1:N + 1, 0] = x1slice
Y[1:N + 1, 1] = yslice
Y[N + 2:, 0] = x2slice[::-1]
Y[N + 2:, 1] = yslice[::-1]
polys.append(Y)
collection = mcoll.PolyCollection(polys, **kwargs)
# now update the datalim and autoscale
X1Y = np.array([x1[where], y[where]]).T
X2Y = np.array([x2[where], y[where]]).T
self.dataLim.update_from_data_xy(X1Y, self.ignore_existing_data_limits,
updatex=True, updatey=True)
self.ignore_existing_data_limits = False
self.dataLim.update_from_data_xy(X2Y, self.ignore_existing_data_limits,
updatex=True, updatey=False)
self.add_collection(collection, autolim=False)
self.autoscale_view()
return collection
#### plotting z(x,y): imshow, pcolor and relatives, contour
@unpack_labeled_data(label_namer=None)
def imshow(self, X, cmap=None, norm=None, aspect=None,
interpolation=None, alpha=None, vmin=None, vmax=None,
origin=None, extent=None, shape=None, filternorm=1,
filterrad=4.0, imlim=None, resample=None, url=None, **kwargs):
"""
Display an image on the axes.
Parameters
----------
X : array_like, shape (n, m) or (n, m, 3) or (n, m, 4)
Display the image in `X` to current axes. `X` may be an
array or a PIL image. If `X` is an array, it
can have the following shapes and types:
- MxN -- values to be mapped (float or int)
- MxNx3 -- RGB (float or uint8)
- MxNx4 -- RGBA (float or uint8)
The value for each component of MxNx3 and MxNx4 float arrays
should be in the range 0.0 to 1.0. MxN arrays are mapped
to colors based on the `norm` (mapping scalar to scalar)
and the `cmap` (mapping the normed scalar to a color).
cmap : `~matplotlib.colors.Colormap`, optional, default: None
If None, default to rc `image.cmap` value. `cmap` is ignored
if `X` is 3-D, directly specifying RGB(A) values.
aspect : ['auto' | 'equal' | scalar], optional, default: None
If 'auto', changes the image aspect ratio to match that of the
axes.
If 'equal', and `extent` is None, changes the axes aspect ratio to
match that of the image. If `extent` is not `None`, the axes
aspect ratio is changed to match that of the extent.
If None, default to rc ``image.aspect`` value.
interpolation : string, optional, default: None
Acceptable values are 'none', 'nearest', 'bilinear', 'bicubic',
'spline16', 'spline36', 'hanning', 'hamming', 'hermite', 'kaiser',
'quadric', 'catrom', 'gaussian', 'bessel', 'mitchell', 'sinc',
'lanczos'
If `interpolation` is None, default to rc `image.interpolation`.
See also the `filternorm` and `filterrad` parameters.
If `interpolation` is 'none', then no interpolation is performed
on the Agg, ps and pdf backends. Other backends will fall back to
'nearest'.
norm : `~matplotlib.colors.Normalize`, optional, default: None
A `~matplotlib.colors.Normalize` instance is used to scale
a 2-D float `X` input to the (0, 1) range for input to the
`cmap`. If `norm` is None, use the default func:`normalize`.
If `norm` is an instance of `~matplotlib.colors.NoNorm`,
`X` must be an array of integers that index directly into
the lookup table of the `cmap`.
vmin, vmax : scalar, optional, default: None
`vmin` and `vmax` are used in conjunction with norm to normalize
luminance data. Note if you pass a `norm` instance, your
settings for `vmin` and `vmax` will be ignored.
alpha : scalar, optional, default: None
The alpha blending value, between 0 (transparent) and 1 (opaque)
origin : ['upper' | 'lower'], optional, default: None
Place the [0,0] index of the array in the upper left or lower left
corner of the axes. If None, default to rc `image.origin`.
extent : scalars (left, right, bottom, top), optional, default: None
The location, in data-coordinates, of the lower-left and
upper-right corners. If `None`, the image is positioned such that
the pixel centers fall on zero-based (row, column) indices.
shape : scalars (columns, rows), optional, default: None
For raw buffer images
filternorm : scalar, optional, default: 1
A parameter for the antigrain image resize filter. From the
antigrain documentation, if `filternorm` = 1, the filter
normalizes integer values and corrects the rounding errors. It
doesn't do anything with the source floating point values, it
corrects only integers according to the rule of 1.0 which means
that any sum of pixel weights must be equal to 1.0. So, the
filter function must produce a graph of the proper shape.
filterrad : scalar, optional, default: 4.0
The filter radius for filters that have a radius parameter, i.e.
when interpolation is one of: 'sinc', 'lanczos' or 'blackman'
Returns
-------
image : `~matplotlib.image.AxesImage`
Other parameters
----------------
kwargs : `~matplotlib.artist.Artist` properties.
See also
--------
matshow : Plot a matrix or an array as an image.
Notes
-----
Unless *extent* is used, pixel centers will be located at integer
coordinates. In other words: the origin will coincide with the center
of pixel (0, 0).
Examples
--------
.. plot:: mpl_examples/pylab_examples/image_demo.py
"""
if not self._hold:
self.cla()
if norm is not None and not isinstance(norm, mcolors.Normalize):
msg = "'norm' must be an instance of 'mcolors.Normalize'"
raise ValueError(msg)
if aspect is None:
aspect = rcParams['image.aspect']
self.set_aspect(aspect)
im = mimage.AxesImage(self, cmap, norm, interpolation, origin, extent,
filternorm=filternorm, filterrad=filterrad,
resample=resample, **kwargs)
im.set_data(X)
im.set_alpha(alpha)
if im.get_clip_path() is None:
# image does not already have clipping set, clip to axes patch
im.set_clip_path(self.patch)
#if norm is None and shape is None:
# im.set_clim(vmin, vmax)
if vmin is not None or vmax is not None:
im.set_clim(vmin, vmax)
else:
im.autoscale_None()
im.set_url(url)
# update ax.dataLim, and, if autoscaling, set viewLim
# to tightly fit the image, regardless of dataLim.
im.set_extent(im.get_extent())
self.add_image(im)
return im
@staticmethod
def _pcolorargs(funcname, *args, **kw):
# This takes one kwarg, allmatch.
# If allmatch is True, then the incoming X, Y, C must
# have matching dimensions, taking into account that
# X and Y can be 1-D rather than 2-D. This perfect
# match is required for Gouroud shading. For flat
# shading, X and Y specify boundaries, so we need
# one more boundary than color in each direction.
# For convenience, and consistent with Matlab, we
# discard the last row and/or column of C if necessary
# to meet this condition. This is done if allmatch
# is False.
allmatch = kw.pop("allmatch", False)
if len(args) == 1:
C = np.asanyarray(args[0])
numRows, numCols = C.shape
if allmatch:
X, Y = np.meshgrid(np.arange(numCols), np.arange(numRows))
else:
X, Y = np.meshgrid(np.arange(numCols + 1),
np.arange(numRows + 1))
return X, Y, C
if len(args) == 3:
X, Y, C = [np.asanyarray(a) for a in args]
numRows, numCols = C.shape
else:
raise TypeError(
'Illegal arguments to %s; see help(%s)' % (funcname, funcname))
Nx = X.shape[-1]
Ny = Y.shape[0]
if len(X.shape) != 2 or X.shape[0] == 1:
x = X.reshape(1, Nx)
X = x.repeat(Ny, axis=0)
if len(Y.shape) != 2 or Y.shape[1] == 1:
y = Y.reshape(Ny, 1)
Y = y.repeat(Nx, axis=1)
if X.shape != Y.shape:
raise TypeError(
'Incompatible X, Y inputs to %s; see help(%s)' % (
funcname, funcname))
if allmatch:
if not (Nx == numCols and Ny == numRows):
raise TypeError('Dimensions of C %s are incompatible with'
' X (%d) and/or Y (%d); see help(%s)' % (
C.shape, Nx, Ny, funcname))
else:
if not (numCols in (Nx, Nx - 1) and numRows in (Ny, Ny - 1)):
raise TypeError('Dimensions of C %s are incompatible with'
' X (%d) and/or Y (%d); see help(%s)' % (
C.shape, Nx, Ny, funcname))
C = C[:Ny - 1, :Nx - 1]
return X, Y, C
@unpack_labeled_data(label_namer=None)
@docstring.dedent_interpd
def pcolor(self, *args, **kwargs):
"""
Create a pseudocolor plot of a 2-D array.
.. note::
pcolor can be very slow for large arrays; consider
using the similar but much faster
:func:`~matplotlib.pyplot.pcolormesh` instead.
Call signatures::
pcolor(C, **kwargs)
pcolor(X, Y, C, **kwargs)
*C* is the array of color values.
*X* and *Y*, if given, specify the (*x*, *y*) coordinates of
the colored quadrilaterals; the quadrilateral for C[i,j] has
corners at::
(X[i, j], Y[i, j]),
(X[i, j+1], Y[i, j+1]),
(X[i+1, j], Y[i+1, j]),
(X[i+1, j+1], Y[i+1, j+1]).
Ideally the dimensions of *X* and *Y* should be one greater
than those of *C*; if the dimensions are the same, then the
last row and column of *C* will be ignored.
Note that the column index corresponds to the
*x*-coordinate, and the row index corresponds to *y*; for
details, see the :ref:`Grid Orientation
<axes-pcolor-grid-orientation>` section below.
If either or both of *X* and *Y* are 1-D arrays or column vectors,
they will be expanded as needed into the appropriate 2-D arrays,
making a rectangular grid.
*X*, *Y* and *C* may be masked arrays. If either C[i, j], or one
of the vertices surrounding C[i,j] (*X* or *Y* at [i, j], [i+1, j],
[i, j+1],[i+1, j+1]) is masked, nothing is plotted.
Keyword arguments:
*cmap*: [ *None* | Colormap ]
A :class:`matplotlib.colors.Colormap` instance. If *None*, use
rc settings.
*norm*: [ *None* | Normalize ]
An :class:`matplotlib.colors.Normalize` instance is used
to scale luminance data to 0,1. If *None*, defaults to
:func:`normalize`.
*vmin*/*vmax*: [ *None* | scalar ]
*vmin* and *vmax* are used in conjunction with *norm* to
normalize luminance data. If either is *None*, it
is autoscaled to the respective min or max
of the color array *C*. If not *None*, *vmin* or
*vmax* passed in here override any pre-existing values
supplied in the *norm* instance.
*shading*: [ 'flat' | 'faceted' ]
If 'faceted', a black grid is drawn around each rectangle; if
'flat', edges are not drawn. Default is 'flat', contrary to
MATLAB.
This kwarg is deprecated; please use 'edgecolors' instead:
* shading='flat' -- edgecolors='none'
* shading='faceted -- edgecolors='k'
*edgecolors*: [ *None* | ``'none'`` | color | color sequence]
If *None*, the rc setting is used by default.
If ``'none'``, edges will not be visible.
An mpl color or sequence of colors will set the edge color
*alpha*: ``0 <= scalar <= 1`` or *None*
the alpha blending value
*snap*: bool
Whether to snap the mesh to pixel boundaries.
Return value is a :class:`matplotlib.collections.Collection`
instance.
.. _axes-pcolor-grid-orientation:
The grid orientation follows the MATLAB convention: an
array *C* with shape (*nrows*, *ncolumns*) is plotted with
the column number as *X* and the row number as *Y*, increasing
up; hence it is plotted the way the array would be printed,
except that the *Y* axis is reversed. That is, *C* is taken
as *C*(*y*, *x*).
Similarly for :func:`meshgrid`::
x = np.arange(5)
y = np.arange(3)
X, Y = np.meshgrid(x, y)
is equivalent to::
X = array([[0, 1, 2, 3, 4],
[0, 1, 2, 3, 4],
[0, 1, 2, 3, 4]])
Y = array([[0, 0, 0, 0, 0],
[1, 1, 1, 1, 1],
[2, 2, 2, 2, 2]])
so if you have::
C = rand(len(x), len(y))
then you need to transpose C::
pcolor(X, Y, C.T)
or::
pcolor(C.T)
MATLAB :func:`pcolor` always discards the last row and column
of *C*, but matplotlib displays the last row and column if *X* and
*Y* are not specified, or if *X* and *Y* have one more row and
column than *C*.
kwargs can be used to control the
:class:`~matplotlib.collections.PolyCollection` properties:
%(PolyCollection)s
.. note::
The default *antialiaseds* is False if the default
*edgecolors*="none" is used. This eliminates artificial lines
at patch boundaries, and works regardless of the value of
alpha. If *edgecolors* is not "none", then the default
*antialiaseds* is taken from
rcParams['patch.antialiased'], which defaults to *True*.
Stroking the edges may be preferred if *alpha* is 1, but
will cause artifacts otherwise.
.. seealso::
:func:`~matplotlib.pyplot.pcolormesh`
For an explanation of the differences between
pcolor and pcolormesh.
"""
if not self._hold:
self.cla()
alpha = kwargs.pop('alpha', None)
norm = kwargs.pop('norm', None)
cmap = kwargs.pop('cmap', None)
vmin = kwargs.pop('vmin', None)
vmax = kwargs.pop('vmax', None)
if 'shading' in kwargs:
cbook.warn_deprecated(
'1.2', name='shading', alternative='edgecolors',
obj_type='option')
shading = kwargs.pop('shading', 'flat')
X, Y, C = self._pcolorargs('pcolor', *args, allmatch=False)
Ny, Nx = X.shape
# unit conversion allows e.g. datetime objects as axis values
self._process_unit_info(xdata=X, ydata=Y, kwargs=kwargs)
X = self.convert_xunits(X)
Y = self.convert_yunits(Y)
# convert to MA, if necessary.
C = ma.asarray(C)
X = ma.asarray(X)
Y = ma.asarray(Y)
mask = ma.getmaskarray(X) + ma.getmaskarray(Y)
xymask = (mask[0:-1, 0:-1] + mask[1:, 1:] +
mask[0:-1, 1:] + mask[1:, 0:-1])
# don't plot if C or any of the surrounding vertices are masked.
mask = ma.getmaskarray(C) + xymask
newaxis = np.newaxis
compress = np.compress
ravelmask = (mask == 0).ravel()
X1 = compress(ravelmask, ma.filled(X[0:-1, 0:-1]).ravel())
Y1 = compress(ravelmask, ma.filled(Y[0:-1, 0:-1]).ravel())
X2 = compress(ravelmask, ma.filled(X[1:, 0:-1]).ravel())
Y2 = compress(ravelmask, ma.filled(Y[1:, 0:-1]).ravel())
X3 = compress(ravelmask, ma.filled(X[1:, 1:]).ravel())
Y3 = compress(ravelmask, ma.filled(Y[1:, 1:]).ravel())
X4 = compress(ravelmask, ma.filled(X[0:-1, 1:]).ravel())
Y4 = compress(ravelmask, ma.filled(Y[0:-1, 1:]).ravel())
npoly = len(X1)
xy = np.concatenate((X1[:, newaxis], Y1[:, newaxis],
X2[:, newaxis], Y2[:, newaxis],
X3[:, newaxis], Y3[:, newaxis],
X4[:, newaxis], Y4[:, newaxis],
X1[:, newaxis], Y1[:, newaxis]),
axis=1)
verts = xy.reshape((npoly, 5, 2))
C = compress(ravelmask, ma.filled(C[0:Ny - 1, 0:Nx - 1]).ravel())
linewidths = (0.25,)
if 'linewidth' in kwargs:
kwargs['linewidths'] = kwargs.pop('linewidth')
kwargs.setdefault('linewidths', linewidths)
if shading == 'faceted':
edgecolors = 'k',
else:
edgecolors = 'none'
if 'edgecolor' in kwargs:
kwargs['edgecolors'] = kwargs.pop('edgecolor')
ec = kwargs.setdefault('edgecolors', edgecolors)
# aa setting will default via collections to patch.antialiased
# unless the boundary is not stroked, in which case the
# default will be False; with unstroked boundaries, aa
# makes artifacts that are often disturbing.
if 'antialiased' in kwargs:
kwargs['antialiaseds'] = kwargs.pop('antialiased')
if 'antialiaseds' not in kwargs and (is_string_like(ec) and
ec.lower() == "none"):
kwargs['antialiaseds'] = False
kwargs.setdefault('snap', False)
collection = mcoll.PolyCollection(verts, **kwargs)
collection.set_alpha(alpha)
collection.set_array(C)
if norm is not None and not isinstance(norm, mcolors.Normalize):
msg = "'norm' must be an instance of 'mcolors.Normalize'"
raise ValueError(msg)
collection.set_cmap(cmap)
collection.set_norm(norm)
collection.set_clim(vmin, vmax)
collection.autoscale_None()
self.grid(False)
x = X.compressed()
y = Y.compressed()
# Transform from native to data coordinates?
t = collection._transform
if (not isinstance(t, mtransforms.Transform) and
hasattr(t, '_as_mpl_transform')):
t = t._as_mpl_transform(self.axes)
if t and any(t.contains_branch_seperately(self.transData)):
trans_to_data = t - self.transData
pts = np.vstack([x, y]).T.astype(np.float)
transformed_pts = trans_to_data.transform(pts)
x = transformed_pts[..., 0]
y = transformed_pts[..., 1]
self.add_collection(collection, autolim=False)
minx = np.amin(x)
maxx = np.amax(x)
miny = np.amin(y)
maxy = np.amax(y)
collection.sticky_edges.x[:] = [minx, maxx]
collection.sticky_edges.y[:] = [miny, maxy]
corners = (minx, miny), (maxx, maxy)
self.update_datalim(corners)
self.autoscale_view()
return collection
@unpack_labeled_data(label_namer=None)
@docstring.dedent_interpd
def pcolormesh(self, *args, **kwargs):
"""
Plot a quadrilateral mesh.
Call signatures::
pcolormesh(C)
pcolormesh(X, Y, C)
pcolormesh(C, **kwargs)
Create a pseudocolor plot of a 2-D array.
pcolormesh is similar to :func:`~matplotlib.pyplot.pcolor`,
but uses a different mechanism and returns a different
object; pcolor returns a
:class:`~matplotlib.collections.PolyCollection` but pcolormesh
returns a
:class:`~matplotlib.collections.QuadMesh`. It is much faster,
so it is almost always preferred for large arrays.
*C* may be a masked array, but *X* and *Y* may not. Masked
array support is implemented via *cmap* and *norm*; in
contrast, :func:`~matplotlib.pyplot.pcolor` simply does not
draw quadrilaterals with masked colors or vertices.
Keyword arguments:
*cmap*: [ *None* | Colormap ]
A :class:`matplotlib.colors.Colormap` instance. If *None*, use
rc settings.
*norm*: [ *None* | Normalize ]
A :class:`matplotlib.colors.Normalize` instance is used to
scale luminance data to 0,1. If *None*, defaults to
:func:`normalize`.
*vmin*/*vmax*: [ *None* | scalar ]
*vmin* and *vmax* are used in conjunction with *norm* to
normalize luminance data. If either is *None*, it
is autoscaled to the respective min or max
of the color array *C*. If not *None*, *vmin* or
*vmax* passed in here override any pre-existing values
supplied in the *norm* instance.
*shading*: [ 'flat' | 'gouraud' ]
'flat' indicates a solid color for each quad. When
'gouraud', each quad will be Gouraud shaded. When gouraud
shading, edgecolors is ignored.
*edgecolors*: [*None* | ``'None'`` | ``'face'`` | color |
color sequence]
If *None*, the rc setting is used by default.
If ``'None'``, edges will not be visible.
If ``'face'``, edges will have the same color as the faces.
An mpl color or sequence of colors will set the edge color
*alpha*: ``0 <= scalar <= 1`` or *None*
the alpha blending value
Return value is a :class:`matplotlib.collections.QuadMesh`
object.
kwargs can be used to control the
:class:`matplotlib.collections.QuadMesh` properties:
%(QuadMesh)s
.. seealso::
:func:`~matplotlib.pyplot.pcolor`
For an explanation of the grid orientation
(:ref:`Grid Orientation <axes-pcolor-grid-orientation>`)
and the expansion of 1-D *X* and/or *Y* to 2-D arrays.
"""
if not self._hold:
self.cla()
alpha = kwargs.pop('alpha', None)
norm = kwargs.pop('norm', None)
cmap = kwargs.pop('cmap', None)
vmin = kwargs.pop('vmin', None)
vmax = kwargs.pop('vmax', None)
shading = kwargs.pop('shading', 'flat').lower()
antialiased = kwargs.pop('antialiased', False)
kwargs.setdefault('edgecolors', 'None')
allmatch = (shading == 'gouraud')
X, Y, C = self._pcolorargs('pcolormesh', *args, allmatch=allmatch)
Ny, Nx = X.shape
# convert to one dimensional arrays
C = C.ravel()
X = X.ravel()
Y = Y.ravel()
# unit conversion allows e.g. datetime objects as axis values
self._process_unit_info(xdata=X, ydata=Y, kwargs=kwargs)
X = self.convert_xunits(X)
Y = self.convert_yunits(Y)
coords = np.zeros(((Nx * Ny), 2), dtype=float)
coords[:, 0] = X
coords[:, 1] = Y
collection = mcoll.QuadMesh(Nx - 1, Ny - 1, coords,
antialiased=antialiased, shading=shading,
**kwargs)
collection.set_alpha(alpha)
collection.set_array(C)
if norm is not None and not isinstance(norm, mcolors.Normalize):
msg = "'norm' must be an instance of 'mcolors.Normalize'"
raise ValueError(msg)
collection.set_cmap(cmap)
collection.set_norm(norm)
collection.set_clim(vmin, vmax)
collection.autoscale_None()
self.grid(False)
# Transform from native to data coordinates?
t = collection._transform
if (not isinstance(t, mtransforms.Transform) and
hasattr(t, '_as_mpl_transform')):
t = t._as_mpl_transform(self.axes)
if t and any(t.contains_branch_seperately(self.transData)):
trans_to_data = t - self.transData
pts = np.vstack([X, Y]).T.astype(np.float)
transformed_pts = trans_to_data.transform(pts)
X = transformed_pts[..., 0]
Y = transformed_pts[..., 1]
self.add_collection(collection, autolim=False)
minx = np.amin(X)
maxx = np.amax(X)
miny = np.amin(Y)
maxy = np.amax(Y)
collection.sticky_edges.x[:] = [minx, maxx]
collection.sticky_edges.y[:] = [miny, maxy]
corners = (minx, miny), (maxx, maxy)
self.update_datalim(corners)
self.autoscale_view()
return collection
@unpack_labeled_data(label_namer=None)
@docstring.dedent_interpd
def pcolorfast(self, *args, **kwargs):
"""
pseudocolor plot of a 2-D array
Experimental; this is a pcolor-type method that
provides the fastest possible rendering with the Agg
backend, and that can handle any quadrilateral grid.
It supports only flat shading (no outlines), it lacks
support for log scaling of the axes, and it does not
have a pyplot wrapper.
Call signatures::
ax.pcolorfast(C, **kwargs)
ax.pcolorfast(xr, yr, C, **kwargs)
ax.pcolorfast(x, y, C, **kwargs)
ax.pcolorfast(X, Y, C, **kwargs)
C is the 2D array of color values corresponding to quadrilateral
cells. Let (nr, nc) be its shape. C may be a masked array.
``ax.pcolorfast(C, **kwargs)`` is equivalent to
``ax.pcolorfast([0,nc], [0,nr], C, **kwargs)``
*xr*, *yr* specify the ranges of *x* and *y* corresponding to the
rectangular region bounding *C*. If::
xr = [x0, x1]
and::
yr = [y0,y1]
then *x* goes from *x0* to *x1* as the second index of *C* goes
from 0 to *nc*, etc. (*x0*, *y0*) is the outermost corner of
cell (0,0), and (*x1*, *y1*) is the outermost corner of cell
(*nr*-1, *nc*-1). All cells are rectangles of the same size.
This is the fastest version.
*x*, *y* are monotonic 1D arrays of length *nc* +1 and *nr* +1,
respectively, giving the x and y boundaries of the cells. Hence
the cells are rectangular but the grid may be nonuniform. The
speed is intermediate. (The grid is checked, and if found to be
uniform the fast version is used.)
*X* and *Y* are 2D arrays with shape (*nr* +1, *nc* +1) that specify
the (x,y) coordinates of the corners of the colored
quadrilaterals; the quadrilateral for C[i,j] has corners at
(X[i,j],Y[i,j]), (X[i,j+1],Y[i,j+1]), (X[i+1,j],Y[i+1,j]),
(X[i+1,j+1],Y[i+1,j+1]). The cells need not be rectangular.
This is the most general, but the slowest to render. It may
produce faster and more compact output using ps, pdf, and
svg backends, however.
Note that the column index corresponds to the x-coordinate,
and the row index corresponds to y; for details, see
:ref:`Grid Orientation <axes-pcolor-grid-orientation>`.
Optional keyword arguments:
*cmap*: [ *None* | Colormap ]
A :class:`matplotlib.colors.Colormap` instance from cm. If *None*,
use rc settings.
*norm*: [ *None* | Normalize ]
A :class:`matplotlib.colors.Normalize` instance is used to scale
luminance data to 0,1. If *None*, defaults to normalize()
*vmin*/*vmax*: [ *None* | scalar ]
*vmin* and *vmax* are used in conjunction with norm to normalize
luminance data. If either are *None*, the min and max
of the color array *C* is used. If you pass a norm instance,
*vmin* and *vmax* will be *None*.
*alpha*: ``0 <= scalar <= 1`` or *None*
the alpha blending value
Return value is an image if a regular or rectangular grid
is specified, and a :class:`~matplotlib.collections.QuadMesh`
collection in the general quadrilateral case.
"""
if not self._hold:
self.cla()
alpha = kwargs.pop('alpha', None)
norm = kwargs.pop('norm', None)
cmap = kwargs.pop('cmap', None)
vmin = kwargs.pop('vmin', None)
vmax = kwargs.pop('vmax', None)
if norm is not None and not isinstance(norm, mcolors.Normalize):
msg = "'norm' must be an instance of 'mcolors.Normalize'"
raise ValueError(msg)
C = args[-1]
nr, nc = C.shape
if len(args) == 1:
style = "image"
x = [0, nc]
y = [0, nr]
elif len(args) == 3:
x, y = args[:2]
x = np.asarray(x)
y = np.asarray(y)
if x.ndim == 1 and y.ndim == 1:
if x.size == 2 and y.size == 2:
style = "image"
else:
dx = np.diff(x)
dy = np.diff(y)
if (np.ptp(dx) < 0.01 * np.abs(dx.mean()) and
np.ptp(dy) < 0.01 * np.abs(dy.mean())):
style = "image"
else:
style = "pcolorimage"
elif x.ndim == 2 and y.ndim == 2:
style = "quadmesh"
else:
raise TypeError("arguments do not match valid signatures")
else:
raise TypeError("need 1 argument or 3 arguments")
if style == "quadmesh":
# convert to one dimensional arrays
# This should also be moved to the QuadMesh class
# data point in each cell is value at lower left corner
C = ma.ravel(C)
X = x.ravel()
Y = y.ravel()
Nx = nc + 1
Ny = nr + 1
# The following needs to be cleaned up; the renderer
# requires separate contiguous arrays for X and Y,
# but the QuadMesh class requires the 2D array.
coords = np.empty(((Nx * Ny), 2), np.float64)
coords[:, 0] = X
coords[:, 1] = Y
# The QuadMesh class can also be changed to
# handle relevant superclass kwargs; the initializer
# should do much more than it does now.
collection = mcoll.QuadMesh(nc, nr, coords, 0, edgecolors="None")
collection.set_alpha(alpha)
collection.set_array(C)
collection.set_cmap(cmap)
collection.set_norm(norm)
self.add_collection(collection, autolim=False)
xl, xr, yb, yt = X.min(), X.max(), Y.min(), Y.max()
ret = collection
else: # It's one of the two image styles.
xl, xr, yb, yt = x[0], x[-1], y[0], y[-1]
if style == "image":
im = mimage.AxesImage(self, cmap, norm,
interpolation='nearest',
origin='lower',
extent=(xl, xr, yb, yt),
**kwargs)
im.set_data(C)
im.set_alpha(alpha)
elif style == "pcolorimage":
im = mimage.PcolorImage(self, x, y, C,
cmap=cmap,
norm=norm,
alpha=alpha,
**kwargs)
self.add_image(im)
ret = im
if vmin is not None or vmax is not None:
ret.set_clim(vmin, vmax)
else:
ret.autoscale_None()
ret.sticky_edges.x[:] = [xl, xr]
ret.sticky_edges.y[:] = [yb, yt]
self.update_datalim(np.array([[xl, yb], [xr, yt]]))
self.autoscale_view(tight=True)
return ret
@unpack_labeled_data()
def contour(self, *args, **kwargs):
if not self._hold:
self.cla()
kwargs['filled'] = False
contours = mcontour.QuadContourSet(self, *args, **kwargs)
self.autoscale_view()
return contours
contour.__doc__ = mcontour.QuadContourSet.contour_doc
@unpack_labeled_data()
def contourf(self, *args, **kwargs):
if not self._hold:
self.cla()
kwargs['filled'] = True
contours = mcontour.QuadContourSet(self, *args, **kwargs)
self.autoscale_view()
return contours
contourf.__doc__ = mcontour.QuadContourSet.contour_doc
def clabel(self, CS, *args, **kwargs):
return CS.clabel(*args, **kwargs)
clabel.__doc__ = mcontour.ContourSet.clabel.__doc__
@docstring.dedent_interpd
def table(self, **kwargs):
"""
Add a table to the current axes.
Call signature::
table(cellText=None, cellColours=None,
cellLoc='right', colWidths=None,
rowLabels=None, rowColours=None, rowLoc='left',
colLabels=None, colColours=None, colLoc='center',
loc='bottom', bbox=None):
Returns a :class:`matplotlib.table.Table` instance. Either `cellText`
or `cellColours` must be provided. For finer grained control over
tables, use the :class:`~matplotlib.table.Table` class and add it to
the axes with :meth:`~matplotlib.axes.Axes.add_table`.
Thanks to John Gill for providing the class and table.
kwargs control the :class:`~matplotlib.table.Table`
properties:
%(Table)s
"""
return mtable.table(self, **kwargs)
#### Data analysis
@unpack_labeled_data(replace_names=["x", 'weights'], label_namer="x")
def hist(self, x, bins=None, range=None, normed=False, weights=None,
cumulative=False, bottom=None, histtype='bar', align='mid',
orientation='vertical', rwidth=None, log=False,
color=None, label=None, stacked=False,
**kwargs):
"""
Plot a histogram.
Compute and draw the histogram of *x*. The return value is a
tuple (*n*, *bins*, *patches*) or ([*n0*, *n1*, ...], *bins*,
[*patches0*, *patches1*,...]) if the input contains multiple
data.
Multiple data can be provided via *x* as a list of datasets
of potentially different length ([*x0*, *x1*, ...]), or as
a 2-D ndarray in which each column is a dataset. Note that
the ndarray form is transposed relative to the list form.
Masked arrays are not supported at present.
Parameters
----------
x : (n,) array or sequence of (n,) arrays
Input values, this takes either a single array or a sequency of
arrays which are not required to be of the same length
bins : integer or array_like or 'auto', optional
If an integer is given, `bins + 1` bin edges are returned,
consistently with :func:`numpy.histogram` for numpy version >=
1.3.
Unequally spaced bins are supported if `bins` is a sequence.
If Numpy 1.11 is installed, may also be ``'auto'``.
Default is taken from the rcParam ``hist.bins``.
range : tuple or None, optional
The lower and upper range of the bins. Lower and upper outliers
are ignored. If not provided, `range` is (x.min(), x.max()). Range
has no effect if `bins` is a sequence.
If `bins` is a sequence or `range` is specified, autoscaling
is based on the specified bin range instead of the
range of x.
Default is ``None``
normed : boolean, optional
If `True`, the first element of the return tuple will
be the counts normalized to form a probability density, i.e.,
``n/(len(x)`dbin)``, i.e., the integral of the histogram will sum
to 1. If *stacked* is also *True*, the sum of the histograms is
normalized to 1.
Default is ``False``
weights : (n, ) array_like or None, optional
An array of weights, of the same shape as `x`. Each value in `x`
only contributes its associated weight towards the bin count
(instead of 1). If `normed` is True, the weights are normalized,
so that the integral of the density over the range remains 1.
Default is ``None``
cumulative : boolean, optional
If `True`, then a histogram is computed where each bin gives the
counts in that bin plus all bins for smaller values. The last bin
gives the total number of datapoints. If `normed` is also `True`
then the histogram is normalized such that the last bin equals 1.
If `cumulative` evaluates to less than 0 (e.g., -1), the direction
of accumulation is reversed. In this case, if `normed` is also
`True`, then the histogram is normalized such that the first bin
equals 1.
Default is ``False``
bottom : array_like, scalar, or None
Location of the bottom baseline of each bin. If a scalar,
the base line for each bin is shifted by the same amount.
If an array, each bin is shifted independently and the length
of bottom must match the number of bins. If None, defaults to 0.
Default is ``None``
histtype : {'bar', 'barstacked', 'step', 'stepfilled'}, optional
The type of histogram to draw.
- 'bar' is a traditional bar-type histogram. If multiple data
are given the bars are aranged side by side.
- 'barstacked' is a bar-type histogram where multiple
data are stacked on top of each other.
- 'step' generates a lineplot that is by default
unfilled.
- 'stepfilled' generates a lineplot that is by default
filled.
Default is 'bar'
align : {'left', 'mid', 'right'}, optional
Controls how the histogram is plotted.
- 'left': bars are centered on the left bin edges.
- 'mid': bars are centered between the bin edges.
- 'right': bars are centered on the right bin edges.
Default is 'mid'
orientation : {'horizontal', 'vertical'}, optional
If 'horizontal', `~matplotlib.pyplot.barh` will be used for
bar-type histograms and the *bottom* kwarg will be the left edges.
rwidth : scalar or None, optional
The relative width of the bars as a fraction of the bin width. If
`None`, automatically compute the width.
Ignored if `histtype` is 'step' or 'stepfilled'.
Default is ``None``
log : boolean, optional
If `True`, the histogram axis will be set to a log scale. If `log`
is `True` and `x` is a 1D array, empty bins will be filtered out
and only the non-empty (`n`, `bins`, `patches`) will be returned.
Default is ``False``
color : color or array_like of colors or None, optional
Color spec or sequence of color specs, one per dataset. Default
(`None`) uses the standard line color sequence.
Default is ``None``
label : string or None, optional
String, or sequence of strings to match multiple datasets. Bar
charts yield multiple patches per dataset, but only the first gets
the label, so that the legend command will work as expected.
default is ``None``
stacked : boolean, optional
If `True`, multiple data are stacked on top of each other If
`False` multiple data are aranged side by side if histtype is
'bar' or on top of each other if histtype is 'step'
Default is ``False``
Returns
-------
n : array or list of arrays
The values of the histogram bins. See **normed** and **weights**
for a description of the possible semantics. If input **x** is an
array, then this is an array of length **nbins**. If input is a
sequence arrays ``[data1, data2,..]``, then this is a list of
arrays with the values of the histograms for each of the arrays
in the same order.
bins : array
The edges of the bins. Length nbins + 1 (nbins left edges and right
edge of last bin). Always a single array even when multiple data
sets are passed in.
patches : list or list of lists
Silent list of individual patches used to create the histogram
or list of such list if multiple input datasets.
Other Parameters
----------------
kwargs : `~matplotlib.patches.Patch` properties
See also
--------
hist2d : 2D histograms
Notes
-----
Until numpy release 1.5, the underlying numpy histogram function was
incorrect with `normed`=`True` if bin sizes were unequal. MPL
inherited that error. It is now corrected within MPL when using
earlier numpy versions.
Examples
--------
.. plot:: mpl_examples/statistics/histogram_demo_features.py
"""
def _normalize_input(inp, ename='input'):
"""Normalize 1 or 2d input into list of np.ndarray or
a single 2D np.ndarray.
Parameters
----------
inp : iterable
ename : str, optional
Name to use in ValueError if `inp` can not be normalized
"""
if (isinstance(x, np.ndarray) or
not iterable(cbook.safe_first_element(inp))):
# TODO: support masked arrays;
inp = np.asarray(inp)
if inp.ndim == 2:
# 2-D input with columns as datasets; switch to rows
inp = inp.T
elif inp.ndim == 1:
# new view, single row
inp = inp.reshape(1, inp.shape[0])
else:
raise ValueError(
"{ename} must be 1D or 2D".format(ename=ename))
if inp.shape[1] < inp.shape[0]:
warnings.warn(
'2D hist input should be nsamples x nvariables;\n '
'this looks transposed '
'(shape is %d x %d)' % inp.shape[::-1])
else:
# multiple hist with data of different length
inp = [np.asarray(xi) for xi in inp]
return inp
if not self._hold:
self.cla()
if np.isscalar(x):
x = [x]
if bins is None:
bins = rcParams['hist.bins']
# xrange becomes range after 2to3
bin_range = range
range = __builtins__["range"]
# NOTE: the range keyword overwrites the built-in func range !!!
# needs to be fixed in numpy !!!
# Validate string inputs here so we don't have to clutter
# subsequent code.
if histtype not in ['bar', 'barstacked', 'step', 'stepfilled']:
raise ValueError("histtype %s is not recognized" % histtype)
if align not in ['left', 'mid', 'right']:
raise ValueError("align kwarg %s is not recognized" % align)
if orientation not in ['horizontal', 'vertical']:
raise ValueError(
"orientation kwarg %s is not recognized" % orientation)
if histtype == 'barstacked' and not stacked:
stacked = True
# process the unit information
self._process_unit_info(xdata=x, kwargs=kwargs)
x = self.convert_xunits(x)
if bin_range is not None:
bin_range = self.convert_xunits(bin_range)
# Check whether bins or range are given explicitly.
binsgiven = (cbook.iterable(bins) or bin_range is not None)
# basic input validation
flat = np.ravel(x)
input_empty = len(flat) == 0
# Massage 'x' for processing.
if input_empty:
x = np.array([[]])
else:
x = _normalize_input(x, 'x')
nx = len(x) # number of datasets
# We need to do to 'weights' what was done to 'x'
if weights is not None:
w = _normalize_input(weights, 'weights')
else:
w = [None]*nx
if len(w) != nx:
raise ValueError('weights should have the same shape as x')
for xi, wi in zip(x, w):
if wi is not None and len(wi) != len(xi):
raise ValueError(
'weights should have the same shape as x')
if color is None:
color = [self._get_lines.get_next_color() for i in xrange(nx)]
else:
color = mcolors.to_rgba_array(color)
if len(color) != nx:
raise ValueError("color kwarg must have one color per dataset")
# Save the datalimits for the same reason:
_saved_bounds = self.dataLim.bounds
# If bins are not specified either explicitly or via range,
# we need to figure out the range required for all datasets,
# and supply that to np.histogram.
if not binsgiven and not input_empty:
xmin = np.inf
xmax = -np.inf
for xi in x:
if len(xi) > 0:
xmin = min(xmin, xi.min())
xmax = max(xmax, xi.max())
bin_range = (xmin, xmax)
# hist_kwargs = dict(range=range, normed=bool(normed))
# We will handle the normed kwarg within mpl until we
# get to the point of requiring numpy >= 1.5.
hist_kwargs = dict(range=bin_range)
n = []
mlast = None
for i in xrange(nx):
# this will automatically overwrite bins,
# so that each histogram uses the same bins
m, bins = np.histogram(x[i], bins, weights=w[i], **hist_kwargs)
m = m.astype(float) # causes problems later if it's an int
if mlast is None:
mlast = np.zeros(len(bins)-1, m.dtype)
if normed and not stacked:
db = np.diff(bins)
m = (m.astype(float) / db) / m.sum()
if stacked:
if mlast is None:
mlast = np.zeros(len(bins)-1, m.dtype)
m += mlast
mlast[:] = m
n.append(m)
if stacked and normed:
db = np.diff(bins)
for m in n:
m[:] = (m.astype(float) / db) / n[-1].sum()
if cumulative:
slc = slice(None)
if cbook.is_numlike(cumulative) and cumulative < 0:
slc = slice(None, None, -1)
if normed:
n = [(m * np.diff(bins))[slc].cumsum()[slc] for m in n]
else:
n = [m[slc].cumsum()[slc] for m in n]
patches = []
# Save autoscale state for later restoration; turn autoscaling
# off so we can do it all a single time at the end, instead
# of having it done by bar or fill and then having to be redone.
_saved_autoscalex = self.get_autoscalex_on()
_saved_autoscaley = self.get_autoscaley_on()
self.set_autoscalex_on(False)
self.set_autoscaley_on(False)
if histtype.startswith('bar'):
totwidth = np.diff(bins)
if rwidth is not None:
dr = min(1.0, max(0.0, rwidth))
elif (len(n) > 1 and
((not stacked) or rcParams['_internal.classic_mode'])):
dr = 0.8
else:
dr = 1.0
if histtype == 'bar' and not stacked:
width = dr*totwidth/nx
dw = width
if nx > 1:
boffset = -0.5*dr*totwidth*(1.0-1.0/nx)
else:
boffset = 0.0
stacked = False
elif histtype == 'barstacked' or stacked:
width = dr*totwidth
boffset, dw = 0.0, 0.0
if align == 'mid' or align == 'edge':
boffset += 0.5*totwidth
elif align == 'right':
boffset += totwidth
if orientation == 'horizontal':
_barfunc = self.barh
bottom_kwarg = 'left'
else: # orientation == 'vertical'
_barfunc = self.bar
bottom_kwarg = 'bottom'
for m, c in zip(n, color):
if bottom is None:
bottom = np.zeros(len(m), np.float)
if stacked:
height = m - bottom
else:
height = m
patch = _barfunc(bins[:-1]+boffset, height, width,
align='center', log=log,
color=c, **{bottom_kwarg: bottom})
patches.append(patch)
if stacked:
bottom[:] = m
boffset += dw
elif histtype.startswith('step'):
# these define the perimeter of the polygon
x = np.zeros(4 * len(bins) - 3, np.float)
y = np.zeros(4 * len(bins) - 3, np.float)
x[0:2*len(bins)-1:2], x[1:2*len(bins)-1:2] = bins, bins[:-1]
x[2*len(bins)-1:] = x[1:2*len(bins)-1][::-1]
if bottom is None:
bottom = np.zeros(len(bins)-1, np.float)
y[1:2*len(bins)-1:2], y[2:2*len(bins):2] = bottom, bottom
y[2*len(bins)-1:] = y[1:2*len(bins)-1][::-1]
if log:
if orientation == 'horizontal':
self.set_xscale('log', nonposx='clip')
logbase = self.xaxis._scale.base
else: # orientation == 'vertical'
self.set_yscale('log', nonposy='clip')
logbase = self.yaxis._scale.base
# Setting a minimum of 0 results in problems for log plots
if np.min(bottom) > 0:
minimum = np.min(bottom)
elif normed or weights is not None:
# For normed data, set to minimum data value / logbase
# (gives 1 full tick-label unit for the lowest filled bin)
ndata = np.array(n)
minimum = (np.min(ndata[ndata > 0])) / logbase
else:
# For non-normed data, set the min to 1 / log base,
# again so that there is 1 full tick-label unit
# for the lowest bin
minimum = 1.0 / logbase
y[0], y[-1] = minimum, minimum
else:
minimum = 0
if align == 'left' or align == 'center':
x -= 0.5*(bins[1]-bins[0])
elif align == 'right':
x += 0.5*(bins[1]-bins[0])
# If fill kwarg is set, it will be passed to the patch collection,
# overriding this
fill = (histtype == 'stepfilled')
xvals, yvals = [], []
for m in n:
if stacked:
# starting point for drawing polygon
y[0] = y[1]
# top of the previous polygon becomes the bottom
y[2*len(bins)-1:] = y[1:2*len(bins)-1][::-1]
# set the top of this polygon
y[1:2*len(bins)-1:2], y[2:2*len(bins):2] = (m + bottom,
m + bottom)
if log:
y[y < minimum] = minimum
if orientation == 'horizontal':
xvals.append(y.copy())
yvals.append(x.copy())
else:
xvals.append(x.copy())
yvals.append(y.copy())
# stepfill is closed, step is not
split = -1 if fill else 2 * len(bins)
# add patches in reverse order so that when stacking,
# items lower in the stack are plottted on top of
# items higher in the stack
for x, y, c in reversed(list(zip(xvals, yvals, color))):
patches.append(self.fill(
x[:split], y[:split],
closed=True if fill else None,
facecolor=c,
edgecolor=None if fill else c,
fill=fill if fill else None))
for patch_list in patches:
for patch in patch_list:
if orientation == 'vertical':
patch.sticky_edges.y.append(minimum)
elif orientation == 'horizontal':
patch.sticky_edges.x.append(minimum)
# we return patches, so put it back in the expected order
patches.reverse()
self.set_autoscalex_on(_saved_autoscalex)
self.set_autoscaley_on(_saved_autoscaley)
self.autoscale_view()
if label is None:
labels = [None]
elif is_string_like(label):
labels = [label]
else:
labels = [six.text_type(lab) for lab in label]
for (patch, lbl) in zip_longest(patches, labels, fillvalue=None):
if patch:
p = patch[0]
p.update(kwargs)
if lbl is not None:
p.set_label(lbl)
for p in patch[1:]:
p.update(kwargs)
p.set_label('_nolegend_')
if nx == 1:
return n[0], bins, cbook.silent_list('Patch', patches[0])
else:
return n, bins, cbook.silent_list('Lists of Patches', patches)
@unpack_labeled_data(replace_names=["x", "y", "weights"], label_namer=None)
def hist2d(self, x, y, bins=10, range=None, normed=False, weights=None,
cmin=None, cmax=None, **kwargs):
"""
Make a 2D histogram plot.
Parameters
----------
x, y: array_like, shape (n, )
Input values
bins: [None | int | [int, int] | array_like | [array, array]]
The bin specification:
- If int, the number of bins for the two dimensions
(nx=ny=bins).
- If [int, int], the number of bins in each dimension
(nx, ny = bins).
- If array_like, the bin edges for the two dimensions
(x_edges=y_edges=bins).
- If [array, array], the bin edges in each dimension
(x_edges, y_edges = bins).
The default value is 10.
range : array_like shape(2, 2), optional, default: None
The leftmost and rightmost edges of the bins along each dimension
(if not specified explicitly in the bins parameters): [[xmin,
xmax], [ymin, ymax]]. All values outside of this range will be
considered outliers and not tallied in the histogram.
normed : boolean, optional, default: False
Normalize histogram.
weights : array_like, shape (n, ), optional, default: None
An array of values w_i weighing each sample (x_i, y_i).
cmin : scalar, optional, default: None
All bins that has count less than cmin will not be displayed and
these count values in the return value count histogram will also
be set to nan upon return
cmax : scalar, optional, default: None
All bins that has count more than cmax will not be displayed (set
to none before passing to imshow) and these count values in the
return value count histogram will also be set to nan upon return
Returns
-------
The return value is ``(counts, xedges, yedges, Image)``.
Other parameters
----------------
kwargs : :meth:`pcolorfast` properties.
See also
--------
hist : 1D histogram
Notes
-----
Rendering the histogram with a logarithmic color scale is
accomplished by passing a :class:`colors.LogNorm` instance to
the *norm* keyword argument. Likewise, power-law normalization
(similar in effect to gamma correction) can be accomplished with
:class:`colors.PowerNorm`.
Examples
--------
.. plot:: mpl_examples/pylab_examples/hist2d_demo.py
"""
# xrange becomes range after 2to3
bin_range = range
range = __builtins__["range"]
h, xedges, yedges = np.histogram2d(x, y, bins=bins, range=bin_range,
normed=normed, weights=weights)
if cmin is not None:
h[h < cmin] = None
if cmax is not None:
h[h > cmax] = None
pc = self.pcolorfast(xedges, yedges, h.T, **kwargs)
self.set_xlim(xedges[0], xedges[-1])
self.set_ylim(yedges[0], yedges[-1])
return h, xedges, yedges, pc
@unpack_labeled_data(replace_names=["x"], label_namer=None)
@docstring.dedent_interpd
def psd(self, x, NFFT=None, Fs=None, Fc=None, detrend=None,
window=None, noverlap=None, pad_to=None,
sides=None, scale_by_freq=None, return_line=None, **kwargs):
"""
Plot the power spectral density.
Call signature::
psd(x, NFFT=256, Fs=2, Fc=0, detrend=mlab.detrend_none,
window=mlab.window_hanning, noverlap=0, pad_to=None,
sides='default', scale_by_freq=None, return_line=None, **kwargs)
The power spectral density :math:`P_{xx}` by Welch's average
periodogram method. The vector *x* is divided into *NFFT* length
segments. Each segment is detrended by function *detrend* and
windowed by function *window*. *noverlap* gives the length of
the overlap between segments. The :math:`|\mathrm{fft}(i)|^2`
of each segment :math:`i` are averaged to compute :math:`P_{xx}`,
with a scaling to correct for power loss due to windowing.
If len(*x*) < *NFFT*, it will be zero padded to *NFFT*.
Parameters
----------
x : 1-D array or sequence
Array or sequence containing the data
%(Spectral)s
%(PSD)s
noverlap : integer
The number of points of overlap between segments.
The default value is 0 (no overlap).
Fc : integer
The center frequency of *x* (defaults to 0), which offsets
the x extents of the plot to reflect the frequency range used
when a signal is acquired and then filtered and downsampled to
baseband.
return_line : bool
Whether to include the line object plotted in the returned values.
Default is False.
**kwargs :
Keyword arguments control the :class:`~matplotlib.lines.Line2D`
properties:
%(Line2D)s
Returns
-------
Pxx : 1-D array
The values for the power spectrum `P_{xx}` before scaling
(real valued)
freqs : 1-D array
The frequencies corresponding to the elements in *Pxx*
line : a :class:`~matplotlib.lines.Line2D` instance
The line created by this function.
Only returned if *return_line* is True.
Notes
-----
For plotting, the power is plotted as
:math:`10\log_{10}(P_{xx})` for decibels, though *Pxx* itself
is returned.
References
----------
Bendat & Piersol -- Random Data: Analysis and Measurement Procedures,
John Wiley & Sons (1986)
Examples
--------
.. plot:: mpl_examples/pylab_examples/psd_demo.py
See Also
--------
:func:`specgram`
:func:`specgram` differs in the default overlap; in not returning
the mean of the segment periodograms; in returning the times of the
segments; and in plotting a colormap instead of a line.
:func:`magnitude_spectrum`
:func:`magnitude_spectrum` plots the magnitude spectrum.
:func:`csd`
:func:`csd` plots the spectral density between two signals.
"""
if not self._hold:
self.cla()
if Fc is None:
Fc = 0
pxx, freqs = mlab.psd(x=x, NFFT=NFFT, Fs=Fs, detrend=detrend,
window=window, noverlap=noverlap, pad_to=pad_to,
sides=sides, scale_by_freq=scale_by_freq)
pxx.shape = len(freqs),
freqs += Fc
if scale_by_freq in (None, True):
psd_units = 'dB/Hz'
else:
psd_units = 'dB'
line = self.plot(freqs, 10 * np.log10(pxx), **kwargs)
self.set_xlabel('Frequency')
self.set_ylabel('Power Spectral Density (%s)' % psd_units)
self.grid(True)
vmin, vmax = self.viewLim.intervaly
intv = vmax - vmin
logi = int(np.log10(intv))
if logi == 0:
logi = .1
step = 10 * logi
#print vmin, vmax, step, intv, math.floor(vmin), math.ceil(vmax)+1
ticks = np.arange(math.floor(vmin), math.ceil(vmax) + 1, step)
self.set_yticks(ticks)
if return_line is None or not return_line:
return pxx, freqs
else:
return pxx, freqs, line
@unpack_labeled_data(replace_names=["x", "y"], label_namer="y")
@docstring.dedent_interpd
def csd(self, x, y, NFFT=None, Fs=None, Fc=None, detrend=None,
window=None, noverlap=None, pad_to=None,
sides=None, scale_by_freq=None, return_line=None, **kwargs):
"""
Plot the cross-spectral density.
Call signature::
csd(x, y, NFFT=256, Fs=2, Fc=0, detrend=mlab.detrend_none,
window=mlab.window_hanning, noverlap=0, pad_to=None,
sides='default', scale_by_freq=None, return_line=None, **kwargs)
The cross spectral density :math:`P_{xy}` by Welch's average
periodogram method. The vectors *x* and *y* are divided into
*NFFT* length segments. Each segment is detrended by function
*detrend* and windowed by function *window*. *noverlap* gives
the length of the overlap between segments. The product of
the direct FFTs of *x* and *y* are averaged over each segment
to compute :math:`P_{xy}`, with a scaling to correct for power
loss due to windowing.
If len(*x*) < *NFFT* or len(*y*) < *NFFT*, they will be zero
padded to *NFFT*.
Parameters
----------
x, y : 1-D arrays or sequences
Arrays or sequences containing the data
%(Spectral)s
%(PSD)s
noverlap : integer
The number of points of overlap between segments.
The default value is 0 (no overlap).
Fc : integer
The center frequency of *x* (defaults to 0), which offsets
the x extents of the plot to reflect the frequency range used
when a signal is acquired and then filtered and downsampled to
baseband.
return_line : bool
Whether to include the line object plotted in the returned values.
Default is False.
**kwargs :
Keyword arguments control the :class:`~matplotlib.lines.Line2D`
properties:
%(Line2D)s
Returns
-------
Pxy : 1-D array
The values for the cross spectrum `P_{xy}` before scaling
(complex valued)
freqs : 1-D array
The frequencies corresponding to the elements in *Pxy*
line : a :class:`~matplotlib.lines.Line2D` instance
The line created by this function.
Only returned if *return_line* is True.
Notes
-----
For plotting, the power is plotted as
:math:`10\log_{10}(P_{xy})` for decibels, though `P_{xy}` itself
is returned.
References
----------
Bendat & Piersol -- Random Data: Analysis and Measurement Procedures,
John Wiley & Sons (1986)
Examples
--------
.. plot:: mpl_examples/pylab_examples/csd_demo.py
See Also
--------
:func:`psd`
:func:`psd` is the equivalent to setting y=x.
"""
if not self._hold:
self.cla()
if Fc is None:
Fc = 0
pxy, freqs = mlab.csd(x=x, y=y, NFFT=NFFT, Fs=Fs, detrend=detrend,
window=window, noverlap=noverlap, pad_to=pad_to,
sides=sides, scale_by_freq=scale_by_freq)
pxy.shape = len(freqs),
# pxy is complex
freqs += Fc
line = self.plot(freqs, 10 * np.log10(np.absolute(pxy)), **kwargs)
self.set_xlabel('Frequency')
self.set_ylabel('Cross Spectrum Magnitude (dB)')
self.grid(True)
vmin, vmax = self.viewLim.intervaly
intv = vmax - vmin
step = 10 * int(np.log10(intv))
ticks = np.arange(math.floor(vmin), math.ceil(vmax) + 1, step)
self.set_yticks(ticks)
if return_line is None or not return_line:
return pxy, freqs
else:
return pxy, freqs, line
@unpack_labeled_data(replace_names=["x"], label_namer=None)
@docstring.dedent_interpd
def magnitude_spectrum(self, x, Fs=None, Fc=None, window=None,
pad_to=None, sides=None, scale=None,
**kwargs):
"""
Plot the magnitude spectrum.
Call signature::
magnitude_spectrum(x, Fs=2, Fc=0, window=mlab.window_hanning,
pad_to=None, sides='default', **kwargs)
Compute the magnitude spectrum of *x*. Data is padded to a
length of *pad_to* and the windowing function *window* is applied to
the signal.
Parameters
----------
x : 1-D array or sequence
Array or sequence containing the data
%(Spectral)s
%(Single_Spectrum)s
scale : [ 'default' | 'linear' | 'dB' ]
The scaling of the values in the *spec*. 'linear' is no scaling.
'dB' returns the values in dB scale. When *mode* is 'density',
this is dB power (10 * log10). Otherwise this is dB amplitude
(20 * log10). 'default' is 'linear'.
Fc : integer
The center frequency of *x* (defaults to 0), which offsets
the x extents of the plot to reflect the frequency range used
when a signal is acquired and then filtered and downsampled to
baseband.
**kwargs :
Keyword arguments control the :class:`~matplotlib.lines.Line2D`
properties:
%(Line2D)s
Returns
-------
spectrum : 1-D array
The values for the magnitude spectrum before scaling (real valued)
freqs : 1-D array
The frequencies corresponding to the elements in *spectrum*
line : a :class:`~matplotlib.lines.Line2D` instance
The line created by this function
Examples
--------
.. plot:: mpl_examples/pylab_examples/spectrum_demo.py
See Also
--------
:func:`psd`
:func:`psd` plots the power spectral density.`.
:func:`angle_spectrum`
:func:`angle_spectrum` plots the angles of the corresponding
frequencies.
:func:`phase_spectrum`
:func:`phase_spectrum` plots the phase (unwrapped angle) of the
corresponding frequencies.
:func:`specgram`
:func:`specgram` can plot the magnitude spectrum of segments within
the signal in a colormap.
"""
if not self._hold:
self.cla()
if Fc is None:
Fc = 0
if scale is None or scale == 'default':
scale = 'linear'
spec, freqs = mlab.magnitude_spectrum(x=x, Fs=Fs, window=window,
pad_to=pad_to, sides=sides)
freqs += Fc
if scale == 'linear':
Z = spec
yunits = 'energy'
elif scale == 'dB':
Z = 20. * np.log10(spec)
yunits = 'dB'
else:
raise ValueError('Unknown scale %s', scale)
lines = self.plot(freqs, Z, **kwargs)
self.set_xlabel('Frequency')
self.set_ylabel('Magnitude (%s)' % yunits)
return spec, freqs, lines[0]
@unpack_labeled_data(replace_names=["x"], label_namer=None)
@docstring.dedent_interpd
def angle_spectrum(self, x, Fs=None, Fc=None, window=None,
pad_to=None, sides=None, **kwargs):
"""
Plot the angle spectrum.
Call signature::
angle_spectrum(x, Fs=2, Fc=0, window=mlab.window_hanning,
pad_to=None, sides='default', **kwargs)
Compute the angle spectrum (wrapped phase spectrum) of *x*.
Data is padded to a length of *pad_to* and the windowing function
*window* is applied to the signal.
Parameters
----------
x : 1-D array or sequence
Array or sequence containing the data
%(Spectral)s
%(Single_Spectrum)s
Fc : integer
The center frequency of *x* (defaults to 0), which offsets
the x extents of the plot to reflect the frequency range used
when a signal is acquired and then filtered and downsampled to
baseband.
**kwargs :
Keyword arguments control the :class:`~matplotlib.lines.Line2D`
properties:
%(Line2D)s
Returns
-------
spectrum : 1-D array
The values for the angle spectrum in radians (real valued)
freqs : 1-D array
The frequencies corresponding to the elements in *spectrum*
line : a :class:`~matplotlib.lines.Line2D` instance
The line created by this function
Examples
--------
.. plot:: mpl_examples/pylab_examples/spectrum_demo.py
See Also
--------
:func:`magnitude_spectrum`
:func:`angle_spectrum` plots the magnitudes of the corresponding
frequencies.
:func:`phase_spectrum`
:func:`phase_spectrum` plots the unwrapped version of this
function.
:func:`specgram`
:func:`specgram` can plot the angle spectrum of segments within the
signal in a colormap.
"""
if not self._hold:
self.cla()
if Fc is None:
Fc = 0
spec, freqs = mlab.angle_spectrum(x=x, Fs=Fs, window=window,
pad_to=pad_to, sides=sides)
freqs += Fc
lines = self.plot(freqs, spec, **kwargs)
self.set_xlabel('Frequency')
self.set_ylabel('Angle (radians)')
return spec, freqs, lines[0]
@unpack_labeled_data(replace_names=["x"], label_namer=None)
@docstring.dedent_interpd
def phase_spectrum(self, x, Fs=None, Fc=None, window=None,
pad_to=None, sides=None, **kwargs):
"""
Plot the phase spectrum.
Call signature::
phase_spectrum(x, Fs=2, Fc=0, window=mlab.window_hanning,
pad_to=None, sides='default', **kwargs)
Compute the phase spectrum (unwrapped angle spectrum) of *x*.
Data is padded to a length of *pad_to* and the windowing function
*window* is applied to the signal.
Parameters
----------
x : 1-D array or sequence
Array or sequence containing the data
%(Spectral)s
%(Single_Spectrum)s
Fc : integer
The center frequency of *x* (defaults to 0), which offsets
the x extents of the plot to reflect the frequency range used
when a signal is acquired and then filtered and downsampled to
baseband.
**kwargs :
Keyword arguments control the :class:`~matplotlib.lines.Line2D`
properties:
%(Line2D)s
Returns
-------
spectrum : 1-D array
The values for the phase spectrum in radians (real valued)
freqs : 1-D array
The frequencies corresponding to the elements in *spectrum*
line : a :class:`~matplotlib.lines.Line2D` instance
The line created by this function
Examples
--------
.. plot:: mpl_examples/pylab_examples/spectrum_demo.py
See Also
--------
:func:`magnitude_spectrum`
:func:`magnitude_spectrum` plots the magnitudes of the
corresponding frequencies.
:func:`angle_spectrum`
:func:`angle_spectrum` plots the wrapped version of this function.
:func:`specgram`
:func:`specgram` can plot the phase spectrum of segments within the
signal in a colormap.
"""
if not self._hold:
self.cla()
if Fc is None:
Fc = 0
spec, freqs = mlab.phase_spectrum(x=x, Fs=Fs, window=window,
pad_to=pad_to, sides=sides)
freqs += Fc
lines = self.plot(freqs, spec, **kwargs)
self.set_xlabel('Frequency')
self.set_ylabel('Phase (radians)')
return spec, freqs, lines[0]
@unpack_labeled_data(replace_names=["x", "y"], label_namer=None)
@docstring.dedent_interpd
def cohere(self, x, y, NFFT=256, Fs=2, Fc=0, detrend=mlab.detrend_none,
window=mlab.window_hanning, noverlap=0, pad_to=None,
sides='default', scale_by_freq=None, **kwargs):
"""
Plot the coherence between *x* and *y*.
Plot the coherence between *x* and *y*. Coherence is the
normalized cross spectral density:
.. math::
C_{xy} = \\frac{|P_{xy}|^2}{P_{xx}P_{yy}}
Parameters
----------
%(Spectral)s
%(PSD)s
noverlap : integer
The number of points of overlap between blocks. The
default value is 0 (no overlap).
Fc : integer
The center frequency of *x* (defaults to 0), which offsets
the x extents of the plot to reflect the frequency range used
when a signal is acquired and then filtered and downsampled to
baseband.
**kwargs :
Keyword arguments control the :class:`~matplotlib.lines.Line2D`
properties of the coherence plot:
%(Line2D)s
Returns
-------
The return value is a tuple (*Cxy*, *f*), where *f* are the
frequencies of the coherence vector.
kwargs are applied to the lines.
References
----------
Bendat & Piersol -- Random Data: Analysis and Measurement Procedures,
John Wiley & Sons (1986)
Examples
--------
.. plot:: mpl_examples/pylab_examples/cohere_demo.py
"""
if not self._hold:
self.cla()
cxy, freqs = mlab.cohere(x=x, y=y, NFFT=NFFT, Fs=Fs, detrend=detrend,
window=window, noverlap=noverlap,
scale_by_freq=scale_by_freq)
freqs += Fc
self.plot(freqs, cxy, **kwargs)
self.set_xlabel('Frequency')
self.set_ylabel('Coherence')
self.grid(True)
return cxy, freqs
@unpack_labeled_data(replace_names=["x"], label_namer=None)
@docstring.dedent_interpd
def specgram(self, x, NFFT=None, Fs=None, Fc=None, detrend=None,
window=None, noverlap=None,
cmap=None, xextent=None, pad_to=None, sides=None,
scale_by_freq=None, mode=None, scale=None,
vmin=None, vmax=None, **kwargs):
"""
Plot a spectrogram.
Call signature::
specgram(x, NFFT=256, Fs=2, Fc=0, detrend=mlab.detrend_none,
window=mlab.window_hanning, noverlap=128,
cmap=None, xextent=None, pad_to=None, sides='default',
scale_by_freq=None, mode='default', scale='default',
**kwargs)
Compute and plot a spectrogram of data in *x*. Data are split into
*NFFT* length segments and the spectrum of each section is
computed. The windowing function *window* is applied to each
segment, and the amount of overlap of each segment is
specified with *noverlap*. The spectrogram is plotted as a colormap
(using imshow).
Parameters
----------
x : 1-D array or sequence
Array or sequence containing the data.
%(Spectral)s
%(PSD)s
mode : [ 'default' | 'psd' | 'magnitude' | 'angle' | 'phase' ]
What sort of spectrum to use. Default is 'psd', which takes
the power spectral density. 'complex' returns the complex-valued
frequency spectrum. 'magnitude' returns the magnitude spectrum.
'angle' returns the phase spectrum without unwrapping. 'phase'
returns the phase spectrum with unwrapping.
noverlap : integer
The number of points of overlap between blocks. The
default value is 128.
scale : [ 'default' | 'linear' | 'dB' ]
The scaling of the values in the *spec*. 'linear' is no scaling.
'dB' returns the values in dB scale. When *mode* is 'psd',
this is dB power (10 * log10). Otherwise this is dB amplitude
(20 * log10). 'default' is 'dB' if *mode* is 'psd' or
'magnitude' and 'linear' otherwise. This must be 'linear'
if *mode* is 'angle' or 'phase'.
Fc : integer
The center frequency of *x* (defaults to 0), which offsets
the x extents of the plot to reflect the frequency range used
when a signal is acquired and then filtered and downsampled to
baseband.
cmap :
A :class:`matplotlib.colors.Colormap` instance; if *None*, use
default determined by rc
xextent : [None | (xmin, xmax)]
The image extent along the x-axis. The default sets *xmin* to the
left border of the first bin (*spectrum* column) and *xmax* to the
right border of the last bin. Note that for *noverlap>0* the width
of the bins is smaller than those of the segments.
**kwargs :
Additional kwargs are passed on to imshow which makes the
specgram image
Notes
-----
*detrend* and *scale_by_freq* only apply when *mode* is set to
'psd'
Returns
-------
spectrum : 2-D array
Columns are the periodograms of successive segments.
freqs : 1-D array
The frequencies corresponding to the rows in *spectrum*.
t : 1-D array
The times corresponding to midpoints of segments (i.e., the columns
in *spectrum*).
im : instance of class :class:`~matplotlib.image.AxesImage`
The image created by imshow containing the spectrogram
Examples
--------
.. plot:: mpl_examples/pylab_examples/specgram_demo.py
See Also
--------
:func:`psd`
:func:`psd` differs in the default overlap; in returning the mean
of the segment periodograms; in not returning times; and in
generating a line plot instead of colormap.
:func:`magnitude_spectrum`
A single spectrum, similar to having a single segment when *mode*
is 'magnitude'. Plots a line instead of a colormap.
:func:`angle_spectrum`
A single spectrum, similar to having a single segment when *mode*
is 'angle'. Plots a line instead of a colormap.
:func:`phase_spectrum`
A single spectrum, similar to having a single segment when *mode*
is 'phase'. Plots a line instead of a colormap.
"""
if not self._hold:
self.cla()
if NFFT is None:
NFFT = 256 # same default as in mlab.specgram()
if Fc is None:
Fc = 0 # same default as in mlab._spectral_helper()
if noverlap is None:
noverlap = 128 # same default as in mlab.specgram()
if mode == 'complex':
raise ValueError('Cannot plot a complex specgram')
if scale is None or scale == 'default':
if mode in ['angle', 'phase']:
scale = 'linear'
else:
scale = 'dB'
elif mode in ['angle', 'phase'] and scale == 'dB':
raise ValueError('Cannot use dB scale with angle or phase mode')
spec, freqs, t = mlab.specgram(x=x, NFFT=NFFT, Fs=Fs,
detrend=detrend, window=window,
noverlap=noverlap, pad_to=pad_to,
sides=sides,
scale_by_freq=scale_by_freq,
mode=mode)
if scale == 'linear':
Z = spec
elif scale == 'dB':
if mode is None or mode == 'default' or mode == 'psd':
Z = 10. * np.log10(spec)
else:
Z = 20. * np.log10(spec)
else:
raise ValueError('Unknown scale %s', scale)
Z = np.flipud(Z)
if xextent is None:
# padding is needed for first and last segment:
pad_xextent = (NFFT-noverlap) / Fs / 2
xextent = np.min(t) - pad_xextent, np.max(t) + pad_xextent
xmin, xmax = xextent
freqs += Fc
extent = xmin, xmax, freqs[0], freqs[-1]
im = self.imshow(Z, cmap, extent=extent, vmin=vmin, vmax=vmax,
**kwargs)
self.axis('auto')
return spec, freqs, t, im
def spy(self, Z, precision=0, marker=None, markersize=None,
aspect='equal', origin="upper", **kwargs):
"""
Plot the sparsity pattern on a 2-D array.
``spy(Z)`` plots the sparsity pattern of the 2-D array *Z*.
Parameters
----------
Z : sparse array (n, m)
The array to be plotted.
precision : float, optional, default: 0
If *precision* is 0, any non-zero value will be plotted; else,
values of :math:`|Z| > precision` will be plotted.
For :class:`scipy.sparse.spmatrix` instances, there is a special
case: if *precision* is 'present', any value present in the array
will be plotted, even if it is identically zero.
origin : ["upper", "lower"], optional, default: "upper"
Place the [0,0] index of the array in the upper left or lower left
corner of the axes.
aspect : ['auto' | 'equal' | scalar], optional, default: "equal"
If 'equal', and `extent` is None, changes the axes aspect ratio to
match that of the image. If `extent` is not `None`, the axes
aspect ratio is changed to match that of the extent.
If 'auto', changes the image aspect ratio to match that of the
axes.
If None, default to rc ``image.aspect`` value.
Two plotting styles are available: image or marker. Both
are available for full arrays, but only the marker style
works for :class:`scipy.sparse.spmatrix` instances.
If *marker* and *markersize* are *None*, an image will be
returned and any remaining kwargs are passed to
:func:`~matplotlib.pyplot.imshow`; else, a
:class:`~matplotlib.lines.Line2D` object will be returned with
the value of marker determining the marker type, and any
remaining kwargs passed to the
:meth:`~matplotlib.axes.Axes.plot` method.
If *marker* and *markersize* are *None*, useful kwargs include:
* *cmap*
* *alpha*
See also
--------
imshow : for image options.
plot : for plotting options
"""
if marker is None and markersize is None and hasattr(Z, 'tocoo'):
marker = 's'
if marker is None and markersize is None:
Z = np.asarray(Z)
mask = np.absolute(Z) > precision
if 'cmap' not in kwargs:
kwargs['cmap'] = mcolors.ListedColormap(['w', 'k'],
name='binary')
nr, nc = Z.shape
extent = [-0.5, nc - 0.5, nr - 0.5, -0.5]
ret = self.imshow(mask, interpolation='nearest', aspect=aspect,
extent=extent, origin=origin, **kwargs)
else:
if hasattr(Z, 'tocoo'):
c = Z.tocoo()
if precision == 'present':
y = c.row
x = c.col
else:
nonzero = np.absolute(c.data) > precision
y = c.row[nonzero]
x = c.col[nonzero]
else:
Z = np.asarray(Z)
nonzero = np.absolute(Z) > precision
y, x = np.nonzero(nonzero)
if marker is None:
marker = 's'
if markersize is None:
markersize = 10
marks = mlines.Line2D(x, y, linestyle='None',
marker=marker, markersize=markersize, **kwargs)
self.add_line(marks)
nr, nc = Z.shape
self.set_xlim(xmin=-0.5, xmax=nc - 0.5)
self.set_ylim(ymin=nr - 0.5, ymax=-0.5)
self.set_aspect(aspect)
ret = marks
self.title.set_y(1.05)
self.xaxis.tick_top()
self.xaxis.set_ticks_position('both')
self.xaxis.set_major_locator(mticker.MaxNLocator(nbins=9,
steps=[1, 2, 5, 10],
integer=True))
self.yaxis.set_major_locator(mticker.MaxNLocator(nbins=9,
steps=[1, 2, 5, 10],
integer=True))
return ret
def matshow(self, Z, **kwargs):
"""
Plot a matrix or array as an image.
The matrix will be shown the way it would be printed, with the first
row at the top. Row and column numbering is zero-based.
Parameters
----------
Z : array_like shape (n, m)
The matrix to be displayed.
Returns
-------
image : `~matplotlib.image.AxesImage`
Other parameters
----------------
kwargs : `~matplotlib.axes.Axes.imshow` arguments
Sets `origin` to 'upper', 'interpolation' to 'nearest' and
'aspect' to equal.
See also
--------
imshow : plot an image
Examples
--------
.. plot:: mpl_examples/pylab_examples/matshow.py
"""
Z = np.asanyarray(Z)
nr, nc = Z.shape
kw = {'origin': 'upper',
'interpolation': 'nearest',
'aspect': 'equal'} # (already the imshow default)
kw.update(kwargs)
im = self.imshow(Z, **kw)
self.title.set_y(1.05)
self.xaxis.tick_top()
self.xaxis.set_ticks_position('both')
self.xaxis.set_major_locator(mticker.MaxNLocator(nbins=9,
steps=[1, 2, 5, 10],
integer=True))
self.yaxis.set_major_locator(mticker.MaxNLocator(nbins=9,
steps=[1, 2, 5, 10],
integer=True))
return im
@unpack_labeled_data(replace_names=["dataset"], label_namer=None)
def violinplot(self, dataset, positions=None, vert=True, widths=0.5,
showmeans=False, showextrema=True, showmedians=False,
points=100, bw_method=None):
"""
Make a violin plot.
Make a violin plot for each column of *dataset* or each vector in
sequence *dataset*. Each filled area extends to represent the
entire data range, with optional lines at the mean, the median,
the minimum, and the maximum.
Parameters
----------
dataset : Array or a sequence of vectors.
The input data.
positions : array-like, default = [1, 2, ..., n]
Sets the positions of the violins. The ticks and limits are
automatically set to match the positions.
vert : bool, default = True.
If true, creates a vertical violin plot.
Otherwise, creates a horizontal violin plot.
widths : array-like, default = 0.5
Either a scalar or a vector that sets the maximal width of
each violin. The default is 0.5, which uses about half of the
available horizontal space.
showmeans : bool, default = False
If `True`, will toggle rendering of the means.
showextrema : bool, default = True
If `True`, will toggle rendering of the extrema.
showmedians : bool, default = False
If `True`, will toggle rendering of the medians.
points : scalar, default = 100
Defines the number of points to evaluate each of the
gaussian kernel density estimations at.
bw_method : str, scalar or callable, optional
The method used to calculate the estimator bandwidth. This can be
'scott', 'silverman', a scalar constant or a callable. If a
scalar, this will be used directly as `kde.factor`. If a
callable, it should take a `GaussianKDE` instance as its only
parameter and return a scalar. If None (default), 'scott' is used.
Returns
-------
result : dict
A dictionary mapping each component of the violinplot to a
list of the corresponding collection instances created. The
dictionary has the following keys:
- ``bodies``: A list of the
:class:`matplotlib.collections.PolyCollection` instances
containing the filled area of each violin.
- ``cmeans``: A
:class:`matplotlib.collections.LineCollection` instance
created to identify the mean values of each of the
violin's distribution.
- ``cmins``: A
:class:`matplotlib.collections.LineCollection` instance
created to identify the bottom of each violin's
distribution.
- ``cmaxes``: A
:class:`matplotlib.collections.LineCollection` instance
created to identify the top of each violin's
distribution.
- ``cbars``: A
:class:`matplotlib.collections.LineCollection` instance
created to identify the centers of each violin's
distribution.
- ``cmedians``: A
:class:`matplotlib.collections.LineCollection` instance
created to identify the median values of each of the
violin's distribution.
"""
def _kde_method(X, coords):
# fallback gracefully if the vector contains only one value
if np.all(X[0] == X):
return (X[0] == coords).astype(float)
kde = mlab.GaussianKDE(X, bw_method)
return kde.evaluate(coords)
vpstats = cbook.violin_stats(dataset, _kde_method, points=points)
return self.violin(vpstats, positions=positions, vert=vert,
widths=widths, showmeans=showmeans,
showextrema=showextrema, showmedians=showmedians)
def violin(self, vpstats, positions=None, vert=True, widths=0.5,
showmeans=False, showextrema=True, showmedians=False):
"""Drawing function for violin plots.
Draw a violin plot for each column of `vpstats`. Each filled area
extends to represent the entire data range, with optional lines at the
mean, the median, the minimum, and the maximum.
Parameters
----------
vpstats : list of dicts
A list of dictionaries containing stats for each violin plot.
Required keys are:
- ``coords``: A list of scalars containing the coordinates that
the violin's kernel density estimate were evaluated at.
- ``vals``: A list of scalars containing the values of the
kernel density estimate at each of the coordinates given
in *coords*.
- ``mean``: The mean value for this violin's dataset.
- ``median``: The median value for this violin's dataset.
- ``min``: The minimum value for this violin's dataset.
- ``max``: The maximum value for this violin's dataset.
positions : array-like, default = [1, 2, ..., n]
Sets the positions of the violins. The ticks and limits are
automatically set to match the positions.
vert : bool, default = True.
If true, plots the violins veritcally.
Otherwise, plots the violins horizontally.
widths : array-like, default = 0.5
Either a scalar or a vector that sets the maximal width of
each violin. The default is 0.5, which uses about half of the
available horizontal space.
showmeans : bool, default = False
If true, will toggle rendering of the means.
showextrema : bool, default = True
If true, will toggle rendering of the extrema.
showmedians : bool, default = False
If true, will toggle rendering of the medians.
Returns
-------
result : dict
A dictionary mapping each component of the violinplot to a
list of the corresponding collection instances created. The
dictionary has the following keys:
- ``bodies``: A list of the
:class:`matplotlib.collections.PolyCollection` instances
containing the filled area of each violin.
- ``cmeans``: A
:class:`matplotlib.collections.LineCollection` instance
created to identify the mean values of each of the
violin's distribution.
- ``cmins``: A
:class:`matplotlib.collections.LineCollection` instance
created to identify the bottom of each violin's
distribution.
- ``cmaxes``: A
:class:`matplotlib.collections.LineCollection` instance
created to identify the top of each violin's
distribution.
- ``cbars``: A
:class:`matplotlib.collections.LineCollection` instance
created to identify the centers of each violin's
distribution.
- ``cmedians``: A
:class:`matplotlib.collections.LineCollection` instance
created to identify the median values of each of the
violin's distribution.
"""
# Statistical quantities to be plotted on the violins
means = []
mins = []
maxes = []
medians = []
# Collections to be returned
artists = {}
N = len(vpstats)
datashape_message = ("List of violinplot statistics and `{0}` "
"values must have the same length")
# Validate positions
if positions is None:
positions = range(1, N + 1)
elif len(positions) != N:
raise ValueError(datashape_message.format("positions"))
# Validate widths
if np.isscalar(widths):
widths = [widths] * N
elif len(widths) != N:
raise ValueError(datashape_message.format("widths"))
# Calculate ranges for statistics lines
pmins = -0.25 * np.array(widths) + positions
pmaxes = 0.25 * np.array(widths) + positions
# Check whether we are rendering vertically or horizontally
if vert:
fill = self.fill_betweenx
perp_lines = self.hlines
par_lines = self.vlines
else:
fill = self.fill_between
perp_lines = self.vlines
par_lines = self.hlines
if rcParams['_internal.classic_mode']:
fillcolor = 'y'
edgecolor = 'r'
else:
fillcolor = edgecolor = self._get_lines.get_next_color()
# Render violins
bodies = []
for stats, pos, width in zip(vpstats, positions, widths):
# The 0.5 factor reflects the fact that we plot from v-p to
# v+p
vals = np.array(stats['vals'])
vals = 0.5 * width * vals / vals.max()
bodies += [fill(stats['coords'],
-vals + pos,
vals + pos,
facecolor=fillcolor,
alpha=0.3)]
means.append(stats['mean'])
mins.append(stats['min'])
maxes.append(stats['max'])
medians.append(stats['median'])
artists['bodies'] = bodies
# Render means
if showmeans:
artists['cmeans'] = perp_lines(means, pmins, pmaxes,
colors=edgecolor)
# Render extrema
if showextrema:
artists['cmaxes'] = perp_lines(maxes, pmins, pmaxes,
colors=edgecolor)
artists['cmins'] = perp_lines(mins, pmins, pmaxes,
colors=edgecolor)
artists['cbars'] = par_lines(positions, mins, maxes,
colors=edgecolor)
# Render medians
if showmedians:
artists['cmedians'] = perp_lines(medians,
pmins,
pmaxes,
colors=edgecolor)
return artists
def tricontour(self, *args, **kwargs):
return mtri.tricontour(self, *args, **kwargs)
tricontour.__doc__ = mtri.TriContourSet.tricontour_doc
def tricontourf(self, *args, **kwargs):
return mtri.tricontourf(self, *args, **kwargs)
tricontourf.__doc__ = mtri.TriContourSet.tricontour_doc
def tripcolor(self, *args, **kwargs):
return mtri.tripcolor(self, *args, **kwargs)
tripcolor.__doc__ = mtri.tripcolor.__doc__
def triplot(self, *args, **kwargs):
return mtri.triplot(self, *args, **kwargs)
triplot.__doc__ = mtri.triplot.__doc__
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