Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

The error black line in the middle of the horizontal bar plot below is extremely long even though stds is:

array([  1.14428879e-01,   3.38164768e-01,   5.58287430e-01,
         7.77484276e-01,   9.95380202e-01,   1.58493526e-08,
         8.69720905e-02,   8.64435493e-02,   5.12989176e-03])

enter image description here

The code for plotting this was:

  pl.barh(ind,means,align='center',xerr=stds,ecolor='k', alpha=0.3)

Why is this?

share|improve this question
None of the plotted error bars seem to match what has been plotted. Could you add some more detail to the question, perhaps example data + script to reproduce the error. –  Greg Aug 29 '13 at 14:39
I had the same thought, but I think the bars are plotted from the bottom up. –  lmjohns3 Aug 29 '13 at 15:53
Ahh I see, my mistake! –  Greg Aug 29 '13 at 16:39

1 Answer 1

up vote 4 down vote accepted

The errorbars in your plot are correct. Take e.g. the longest one, with value 9.95380202e-01 = 0.9953802021.0. When you pass a Nx1 array of values to xerr the values are plotted as +/- the value, i.e. they will span twice the length. So an xerr with value 1.0 will span 2.0 units, from width - 1.0 to width + 1.0. To avoid this you can create a 2xN array where one row consists only of zeros, see example below.

From the documentation of pyplot.bar() (same applies to pyplot.barh()):

Detail: xerr and yerr are passed directly to errorbar(), so they can also have shape 2xN for independent specification of lower and upper errors.

From the documentation of pyplot.errorbar():

xerr/yerr: [ scalar | N, Nx1, or 2xN array-like ]

If a scalar number, len(N) array-like object, or an Nx1 array-like object, errorbars are drawn at +/-value relative to the data.

If a sequence of shape 2xN, errorbars are drawn at -row1 and +row2 relative to the data.

An example showing the different "combinations" of errorbars:

import matplotlib.pyplot as plt
import numpy as np

x = np.arange(9)
y = np.random.rand(9) * 10

stds = np.array([1.14428879e-01, 3.38164768e-01, 5.58287430e-01,
                 7.77484276e-01, 9.95380202e-01, 1.58493526e-08,
                 8.69720905e-02, 8.64435493e-02, 5.12989176e-03])

# Create array with only positive errors
pos_xerr = np.vstack((np.zeros(len(stds)), stds))

# Create array with only negative errors
neg_xerr = np.vstack((stds, np.zeros(len(stds))))

#Create array with different positive and negative error
both_xerr = np.vstack((stds, np.random.rand(len(stds))*2))

fig, ((ax, ax2),(ax3, ax4)) = plt.subplots(2,2, figsize=(9,5))

# Plot centered errorbars (+/- given value)
ax.barh(x, y, xerr=stds, ecolor='k', align='center', alpha=0.3)
ax.set_title('+/- errorbars')
# Plot positive errorbars
ax2.barh(x, y, xerr=pos_xerr, ecolor='g', align='center', alpha=0.3)
ax2.set_title('Positive errorbars')
# Plot negative errorbars
ax3.barh(x, y, xerr=neg_xerr, ecolor='r', align='center', alpha=0.3)
ax3.set_title('Negative errorbars')
# Plot errorbars with different positive and negative error
ax4.barh(x, y, xerr=both_xerr, ecolor='b', align='center', alpha=0.3)
ax4.set_title('Different positive and negative error')



Different combinations of xerr

share|improve this answer
Great answer and extremely helpful. Thanks. –  user815423426 Aug 29 '13 at 16:45

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.