stat_summary#
- stat_summary(mapping=None, *, data=None, geom=None, position=None, show_legend=None, inherit_aes=None, sampling=None, tooltips=None, orientation=None, fun=None, fun_min=None, fun_max=None, quantiles=None, color_by=None, fill_by=None, **other_args)#
Display the aggregated values of a single continuous variable grouped along the x axis.
- Parameters:
- mappingFeatureSpec
Set of aesthetic mappings created by aes() function. Aesthetic mappings describe the way that variables in the data are mapped to plot “aesthetics”.
- datadict or Pandas or Polars DataFrame
The data to be displayed in this layer. If None, the default, the data is inherited from the plot data as specified in the call to ggplot.
- geomstr, default=’pointrange’
The geometry to display the summary stat for this layer, as a string.
- positionstr or FeatureSpec, default=’identity’
Position adjustment. Either a position adjustment name: ‘dodge’, ‘dodgev’, ‘jitter’, ‘nudge’, ‘jitterdodge’, ‘fill’, ‘stack’ or ‘identity’, or the result of calling a position adjustment function (e.g., position_dodge() etc.).
- show_legendbool, default=True
False - do not show legend for this layer.
- inherit_aesbool, default=True
False - do not combine the layer aesthetic mappings with the plot shared mappings.
- samplingFeatureSpec
Result of the call to the sampling_xxx() function. To prevent any sampling for this layer pass value “none” (string “none”).
- tooltipslayer_tooltips
Result of the call to the layer_tooltips() function. Specify appearance, style and content. Set tooltips=’none’ to hide tooltips from the layer.
- orientationstr
Specify the axis that the layer’s stat and geom should run along. The default value (None) automatically determines the orientation based on the aesthetic mapping. If the automatic detection doesn’t work, it can be set explicitly by specifying the ‘x’ or ‘y’ orientation.
- fun{‘count’, ‘sum’, ‘mean’, ‘median’, ‘min’, ‘max’, ‘lq’, ‘mq’, ‘uq’}, default=’mean’
Name of function computing stat variable ‘..y..’. Names ‘lq’, ‘mq’, ‘uq’ corresponds to lower, middle and upper quantiles, default=[0.25, 0.5, 0.75].
- fun_min{‘count’, ‘sum’, ‘mean’, ‘median’, ‘min’, ‘max’, ‘lq’, ‘mq’, ‘uq’}, default=’min’
Name of function computing stat variable ‘..ymin..’. Names ‘lq’, ‘mq’, ‘uq’ corresponds to lower, middle and upper quantiles, default=[0.25, 0.5, 0.75].
- fun_max{‘count’, ‘sum’, ‘mean’, ‘median’, ‘min’, ‘max’, ‘lq’, ‘mq’, ‘uq’}, default=’max’
Name of function computing stat variable ‘..ymax..’. Names ‘lq’, ‘mq’, ‘uq’ corresponds to lower, middle and upper quantiles, default=[0.25, 0.5, 0.75].
- quantileslist of float, default=[0.25, 0.5, 0.75]
A list of probabilities defining the quantile functions ‘lq’, ‘mq’ and ‘uq’. Must contain exactly 3 values between 0 and 1.
- color_by{‘fill’, ‘color’, ‘paint_a’, ‘paint_b’, ‘paint_c’}, default=’color’
Define the color aesthetic for the geometry.
- fill_by{‘fill’, ‘color’, ‘paint_a’, ‘paint_b’, ‘paint_c’}, default=’fill’
Define the fill aesthetic for the geometry.
- other_args
Other arguments passed on to the layer. These are often aesthetics settings used to set an aesthetic to a fixed value, like color=’red’, fill=’blue’, size=3 or shape=21. They may also be parameters to the paired geom/stat.
- Returns:
- LayerSpec
Geom object specification.
Notes
Computed variables:
..y.. : result of calculating of fun.
..ymin.. : result of calculating of fun_min.
..ymax.. : result of calculating of fun_max.
To hide axis tooltips, set ‘blank’ or the result of element_blank() to the axis_tooltip or axis_tooltip_x parameter of the theme().
Examples
1import numpy as np 2from lets_plot import * 3LetsPlot.setup_html() 4n = 100 5np.random.seed(42) 6x = np.random.choice(['a', 'b', 'c'], size=n) 7y = np.random.normal(size=n) 8ggplot({'x': x, 'y': y}, aes(x='x', y='y')) + \ 9 stat_summary()
1import numpy as np 2from lets_plot import * 3LetsPlot.setup_html() 4n = 100 5np.random.seed(42) 6x = np.random.choice(['a', 'b', 'c'], size=n) 7y = np.random.normal(size=n) 8ggplot({'x': x, 'y': y}, aes(x='x', y='y', fill='x')) + \ 9 stat_summary(geom='crossbar', fatten=5)
1import numpy as np 2from lets_plot import * 3LetsPlot.setup_html() 4n = 100 5np.random.seed(42) 6x = np.random.choice(['a', 'b', 'c'], size=n) 7y = np.random.normal(size=n) 8ggplot({'x': x, 'y': y}, aes(x='x', y='y')) + \ 9 stat_summary(position=position_nudge(x=-.1), color="red") + \ 10 stat_summary(fun='mq', fun_min='lq', fun_max='uq', quantiles=[.1, .5, .9], \ 11 position=position_nudge(x=.1), color="blue")