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I want to create hierarchic labels in matplotlib for a barplot like this:

barplot

that compares two competitors in 5 runs. I want to obtain a label similar to

Competitor1 Competitor2      Competitor1 Competitor2
           1                            2 

etc.

Is it possible in matplotlib or I have to add them manually after?

Thanks

My code:

# imports
import pandas as pd
import sys
import itertools
import os
import matplotlib as mpl
from matplotlib import pyplot as plt
import numpy as np

# axes limits
x_min = 1
y_min = 0
x_max = None
y_max = None

bar_width = 0.4

bar_offset = -bar_width

for method in methods:

    # load method's data
    data = pd.read_table(fpath, sep='\t', index_col=0)

    # update x position with offset
    x = data.index + bar_offset

    # grey is always higher than black
    y_grey = data['grey']
    y_black = data['black']

    # update x-axis upper limit
    x_max = max(x) if x_max is None else max(max(x), x_max)

    # update y-axis upper limit
    if y_max is None:
        y_max = max(y_grey + y_grey)
    else:
        y_max = max(max(y_grey + y_grey), y_max)

    # plot grey and black bars
    color = 'k'
    plt.bar(x, y_grey, color=color, alpha=0.65, width=bar_width)
    plt.bar(x, y_black, color=color, alpha=1, width=bar_width)

    # update offset
    bar_offset += bar_width + 0.01


# labels and limits
xlabel = 'Classes'
plt.xlabel(xlabel)
plt.xlim(x_min - 0.6, x_max + 0.6)
plt.ylim(y_min - 1, y_max + 1)

# squared aspect
ax = plt.axes()
aspect = np.diff(ax.get_xlim()) / np.diff(ax.get_ylim())
ax.set_aspect(aspect)

# save figure
plt.savefig(output_fn)
plt.close()
share|improve this question
    
I would suggest adding related plotting code. –  Mehmet M. Inanc Jul 1 at 12:54
    
Acc, I forgot. Here it is.. –  fbrundu Jul 1 at 13:10

1 Answer 1

up vote 1 down vote accepted

I achieved it in an hackish way, but it serves the purpose:

barplot

Basically I put the labels by myself and I increase the margin between them and the axis.

# imports
import pandas as pd
import sys
import itertools
import os
import matplotlib as mpl
from matplotlib import pyplot as plt
import numpy as np

# increase margin
mpl.rcParams['xtick.major.pad'] = 35.

# axes limits
x_min = 1
y_min = 0
x_max = None
y_max = None

bar_width = 0.4

bar_offset = -bar_width

for method in methods:

    # load method's data
    data = pd.read_table(fpath, sep='\t', index_col=0)

    # get label from data for method (not shown here)
    label = get_label(data)   

    # update x position with offset
    x = data.index + bar_offset

    # grey is always higher than black
    y_grey = data['grey']
    y_black = data['black']

    # update x-axis upper limit
    x_max = max(x) if x_max is None else max(max(x), x_max)

    # update y-axis upper limit
    if y_max is None:
        y_max = max(y_grey + y_grey)
    else:
        y_max = max(max(y_grey + y_grey), y_max)

    # plot grey and black bars
    color = 'k'
    plt.bar(x, y_grey, color=color, alpha=0.65, width=bar_width)
    plt.bar(x, y_black, color=color, alpha=1, width=bar_width)

    # put the labels
    for xx in x:
    plt.text(xx + bar_width / 2 - 0.1, -8, label, rotation=60,
             color=mpl.rcParams['xtick.color'],
             size=mpl.rcParams['xtick.labelsize'])

    # update offset
    bar_offset += bar_width + 0.01


# labels and limits
xlabel = 'Classes'
plt.xlabel(xlabel)
plt.xlim(x_min - 0.6, x_max + 0.6)
plt.ylim(y_min - 1, y_max + 1)

# squared aspect
ax = plt.axes()
aspect = np.diff(ax.get_xlim()) / np.diff(ax.get_ylim())
ax.set_aspect(aspect)

# save figure
plt.savefig(output_fn)
plt.close()
share|improve this answer
    
have a look at scipy.dendrogram –  tcaswell Jul 6 at 1:23
    
Thanks @tcaswell, I will try it. –  fbrundu Jul 6 at 11:01

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