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I have a set of N objects with two properties: x and y. I would like to depict the distribution of x with a histogram in MATPLOTLIB using hist(). Easy enough. Now, I would like to color-code EACH bar of the histogram with a color that represents the average value of y in that set with a colormap. Is there an easy way to do this? Here, x and y are both N-d numpy arrays. Thanks!

fig = plt.figure()
n, bins, patches = plt.hist(x, 100, normed=1, histtype='stepfilled')
plt.setp(patches, 'facecolor', 'g', 'alpha', 0.1)
plt.ylabel('Normalized frequency')
share|improve this question
You're capturing the patches object returned, can't you just iterate through that based on bins and set the colors as you see fit? – Nick T Feb 6 '14 at 18:28
So I would have to manually check each of the N objects for which bin they are in, record the y there, and eventually take the average y to determine the color? – Cokes Feb 6 '14 at 18:39
Something like that; first, I'd probably combine x and y into one array, then sort it by x. After, iterate through the data, summing y then averaging and coloring when you see x cross a bin boundary. – Nick T Feb 6 '14 at 18:57
This is actually a more interesting numpy problem than matplotlib problem – tcaswell Feb 7 '14 at 0:41
up vote 1 down vote accepted
import numpy as np
import matplotlib
import matplotlib.pyplot as plt
# set up the bins
Nbins = 10
bins = np.linspace(0, 1, Nbins +1, endpoint=True)
# get some fake data
x = np.random.rand(300)
y = np.arange(300)
# figure out which bin each x goes into
bin_num = np.digitize(x, bins, right=True) - 1
# compute the counts per bin
hist_vals = np.bincount(bin_num)
# set up array for bins
means = np.zeros(Nbins)
# numpy slicing magic to sum the y values by bin
means[bin_num] += y
# take the average
means /= hist_vals

# make the figure/axes objects
fig, ax = plt.subplots(1,1)
# get a color map
my_cmap = cm.get_cmap('jet')
# get normalize function (takes data in range [vmin, vmax] -> [0, 1])
my_norm = Normalize()
# use bar plot[:-1], hist_vals, color=my_cmap(my_norm(means)), width=np.diff(bins))

# make sure the figure updates

related: vary the color of each bar in bargraph using particular value

share|improve this answer
The "right" option of digitize is available on my Ubuntu machine, but not on my Mac... Hmmm. with:… without:… – Cokes Feb 7 '14 at 18:47
note the versions, 1.8 vs 1.6. Update your mac ;) – tcaswell Feb 7 '14 at 18:49
See… you can replicate the function of digitize with one pass through x – tcaswell Feb 7 '14 at 18:50

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