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Is there a way to group boxplots in matplotlib?

Assume we have three groups "A", "B", and "C" and for each we want to create a boxplot for both "apples" and "oranges". If a grouping is not possible directly, we can create all six combinations and place them linearly side by side. What would be to simplest way to visualize the groupings? I'm trying to avoid setting the tick labels to something like "A + apples" since my scenario involves much longer names than "A" :). Any ideas are highly welcome!

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3 Answers 3

up vote 25 down vote accepted

How about using colors to differentiate between "apples" and "oranges" and spacing to separate "A", "B" and "C"?

Something like this:

from pylab import plot, show, savefig, xlim, figure, \
                hold, ylim, legend, boxplot, setp, axes

# function for setting the colors of the box plots pairs
def setBoxColors(bp):
    setp(bp['boxes'][0], color='blue')
    setp(bp['caps'][0], color='blue')
    setp(bp['caps'][1], color='blue')
    setp(bp['whiskers'][0], color='blue')
    setp(bp['whiskers'][1], color='blue')
    setp(bp['fliers'][0], color='blue')
    setp(bp['fliers'][1], color='blue')
    setp(bp['medians'][0], color='blue')

    setp(bp['boxes'][1], color='red')
    setp(bp['caps'][2], color='red')
    setp(bp['caps'][3], color='red')
    setp(bp['whiskers'][2], color='red')
    setp(bp['whiskers'][3], color='red')
    setp(bp['fliers'][2], color='red')
    setp(bp['fliers'][3], color='red')
    setp(bp['medians'][1], color='red')

# Some fake data to plot
A= [[1, 2, 5,],  [7, 2]]
B = [[5, 7, 2, 2, 5], [7, 2, 5]]
C = [[3,2,5,7], [6, 7, 3]]

fig = figure()
ax = axes()

# first boxplot pair
bp = boxplot(A, positions = [1, 2], widths = 0.6)

# second boxplot pair
bp = boxplot(B, positions = [4, 5], widths = 0.6)

# thrid boxplot pair
bp = boxplot(C, positions = [7, 8], widths = 0.6)

# set axes limits and labels
ax.set_xticklabels(['A', 'B', 'C'])
ax.set_xticks([1.5, 4.5, 7.5])

# draw temporary red and blue lines and use them to create a legend
hB, = plot([1,1],'b-')
hR, = plot([1,1],'r-')
legend((hB, hR),('Apples', 'Oranges'))


grouped box plot

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That is a very nice solution since you have both groping by colors and grouping by positions! Since it looks like there is no built in functionality this is exactly what I was looking for. Thank you very much! –  bluenote10 May 17 '13 at 6:43
This example works perfectly with matplotlib 1.3.1 but not 1.4.0 because of github.com/matplotlib/matplotlib/issues/3544 (although the data you chose has no outliers so that the problem would not show, you will still get an error when accessing bp['fliers'][2]). –  anonymous Sep 20 '14 at 13:22

A simple way would be to use pandas. I adapted an example from the plotting documentation:

In [1]: import pandas as pd

In [2]: df = pd.DataFrame(np.random.rand(12,2), columns=['Apples', 'Oranges'] )

In [3]: df['Categories'] = pd.Series(list('AAAABBBBCCCC'))

In [4]: pd.options.display.mpl_style = 'default'

In [5]: df.boxplot(by='Categories')
array([<matplotlib.axes.AxesSubplot object at 0x51a5190>,
       <matplotlib.axes.AxesSubplot object at 0x53fddd0>], dtype=object)

pandas boxplot

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Thank you very much! That is also a very interesting suggestion! –  bluenote10 May 17 '13 at 6:46
I can't figure out how to do the inverse of this - boxplots for each fruit, grouped by categories (same grouping as molly's annwer). Is there a way? –  naught101 May 27 '14 at 4:58
Not sure what "the inverse" should be. If you mean exactly the kind of plot from molly's answer (only one subplot), this is not possible with a pandas plotting command. You have to use matplotlib and a more complicated script. –  bmu Jun 6 '14 at 5:38

Here is my version. It stores data based on categories.

import matplotlib.pyplot as plt
import numpy as np

data_a = [[1,2,5], [5,7,2,2,5], [7,2,5]]
data_b = [[6,4,2], [1,2,5,3,2], [2,3,5,1]]

mu = [3.93, 7.761, 14.319]
alpha = [0.9996197532958419, 0.9702573729698682, 0.9375845650647818]
ticks = ['A', 'B', 'C']

def set_box_color(bp, color):
    plt.setp(bp['boxes'], color=color)
    plt.setp(bp['whiskers'], color=color)
    plt.setp(bp['caps'], color=color)
    plt.setp(bp['medians'], color=color)


bpl = plt.boxplot(data_a, positions=np.array(xrange(len(data_a)))*2.0-0.4, sym='', widths=0.6)
bpr = plt.boxplot(data_b, positions=np.array(xrange(len(data_b)))*2.0+0.4, sym='', widths=0.6)
set_box_color(bpl, '#D7191C') # colors are from http://colorbrewer2.org/
set_box_color(bpr, '#2C7BB6')

# draw temporary red and blue lines and use them to create a legend
plt.plot([], c='#D7191C', label='Apples')
plt.plot([], c='#2C7BB6', label='Oranges')

plt.xticks(xrange(0, len(ticks) * 2, 2), ticks)
plt.xlim(-2, len(ticks)*2)
plt.ylim(0, 8)

I am short of reputation so I cannot post an image to here. You can run it and see the result. Basically it's very similar to what Molly did.

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