def __init__(self, data, return_type="axes", **kwargs): # Do not call LinePlot.__init__ which may fill nan if return_type not in self._valid_return_types: raise ValueError("return_type must be {None, 'axes', 'dict', 'both'}") self.return_type = return_type MPLPlot.__init__(self, data, **kwargs)
def __init__( self, data, bins: int | np.ndarray | list[np.ndarray] = 10, bottom: int | np.ndarray = 0, **kwargs, ) -> None: self.bins = bins # use mpl default self.bottom = bottom # Do not call LinePlot.__init__ which may fill nan MPLPlot.__init__(self, data, **kwargs)
def _plot(cls, ax, y, style=None, bw_method=None, ind=None, column_num=None, stacking_id=None, **kwds): from scipy.stats import gaussian_kde y = remove_na_arraylike(y) gkde = gaussian_kde(y, bw_method=bw_method) y = gkde.evaluate(ind) lines = MPLPlot._plot(ax, ind, y, style=style, **kwds) return lines
def _plot(cls, ax, y, style=None, bw_method=None, ind=None, column_num=None, stacking_id=None, **kwds): y = KdePlotBase.compute_kde(y, bw_method=bw_method, ind=ind) lines = PandasMPLPlot._plot(ax, ind, y, style=style, **kwds) return lines
def __init__(self, data, bins=10, bottom=0, **kwargs): self.bins = bins # use mpl default self.bottom = bottom # Do not call LinePlot.__init__ which may fill nan MPLPlot.__init__(self, data, **kwargs)
def __init__(self, data, bw_method=None, ind=None, **kwargs): MPLPlot.__init__(self, data, **kwargs) self.bw_method = bw_method self.ind = ind
def plot_series( data, kind="line", ax=None, # Series unique figsize=None, use_index=True, title=None, grid=None, legend=False, style=None, logx=False, logy=False, loglog=False, xticks=None, yticks=None, xlim=None, ylim=None, rot=None, fontsize=None, colormap=None, table=False, yerr=None, xerr=None, label=None, secondary_y=False, # Series unique **kwds, ): """ Make plots of Series using matplotlib / pylab. Each plot kind has a corresponding method on the ``Series.plot`` accessor: ``s.plot(kind='line')`` is equivalent to ``s.plot.line()``. Parameters ---------- data : Series kind : str - 'line' : line plot (default) - 'bar' : vertical bar plot - 'barh' : horizontal bar plot - 'hist' : histogram - 'box' : boxplot - 'kde' : Kernel Density Estimation plot - 'density' : same as 'kde' - 'area' : area plot - 'pie' : pie plot ax : matplotlib axes object If not passed, uses gca() figsize : a tuple (width, height) in inches use_index : boolean, default True Use index as ticks for x axis title : string or list Title to use for the plot. If a string is passed, print the string at the top of the figure. If a list is passed and `subplots` is True, print each item in the list above the corresponding subplot. grid : boolean, default None (matlab style default) Axis grid lines legend : False/True/'reverse' Place legend on axis subplots style : list or dict matplotlib line style per column logx : boolean, default False Use log scaling on x axis logy : boolean, default False Use log scaling on y axis loglog : boolean, default False Use log scaling on both x and y axes xticks : sequence Values to use for the xticks yticks : sequence Values to use for the yticks xlim : 2-tuple/list ylim : 2-tuple/list rot : int, default None Rotation for ticks (xticks for vertical, yticks for horizontal plots) fontsize : int, default None Font size for xticks and yticks colormap : str or matplotlib colormap object, default None Colormap to select colors from. If string, load colormap with that name from matplotlib. colorbar : boolean, optional If True, plot colorbar (only relevant for 'scatter' and 'hexbin' plots) position : float Specify relative alignments for bar plot layout. From 0 (left/bottom-end) to 1 (right/top-end). Default is 0.5 (center) table : boolean, Series or DataFrame, default False If True, draw a table using the data in the DataFrame and the data will be transposed to meet matplotlib's default layout. If a Series or DataFrame is passed, use passed data to draw a table. yerr : DataFrame, Series, array-like, dict and str See :ref:`Plotting with Error Bars <visualization.errorbars>` for detail. xerr : same types as yerr. label : label argument to provide to plot secondary_y : boolean or sequence of ints, default False If True then y-axis will be on the right mark_right : boolean, default True When using a secondary_y axis, automatically mark the column labels with "(right)" in the legend **kwds : keywords Options to pass to matplotlib plotting method Returns ------- axes : :class:`matplotlib.axes.Axes` or numpy.ndarray of them Notes ----- - See matplotlib documentation online for more on this subject - If `kind` = 'bar' or 'barh', you can specify relative alignments for bar plot layout by `position` keyword. From 0 (left/bottom-end) to 1 (right/top-end). Default is 0.5 (center) """ # function copied from pandas.plotting._core # so it calls modified _plot below import matplotlib.pyplot as plt if ax is None and len(plt.get_fignums()) > 0: with plt.rc_context(): ax = plt.gca() ax = PandasMPLPlot._get_ax_layer(ax) return _plot( data, kind=kind, ax=ax, figsize=figsize, use_index=use_index, title=title, grid=grid, legend=legend, style=style, logx=logx, logy=logy, loglog=loglog, xticks=xticks, yticks=yticks, xlim=xlim, ylim=ylim, rot=rot, fontsize=fontsize, colormap=colormap, table=table, yerr=yerr, xerr=xerr, label=label, secondary_y=secondary_y, **kwds, )