# Indicating the statistically significant difference in bar graph

I use a bar graph to indicate the data of each group. Some of these bars differ significantly from each other. How can I indicate the significant difference in the bar plot?

import numpy as np
import matplotlib.pyplot as plt
menMeans   = (5, 15, 30, 40)
menStd     = (2, 3, 4, 5)
ind = np.arange(4)    # the x locations for the groups
width=0.35
p1 = plt.bar(ind, menMeans, width=width, color='r', yerr=menStd)
plt.xticks(ind+width/2., ('A', 'B', 'C', 'D') )

I am aiming for

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Are the only comparisons to be made locally adjacent? That is, do you only want to show the difference between (A,B) (B,C) (C,D) but not (A,C)? –  Hooked Jul 17 '12 at 19:24
No, I would like to make a comparison between all possible pairs. –  imsc Jul 17 '12 at 19:46
It might be hard to show this on the chart, especially if there are a large number of items. If you have N=10, items there are 45 different pairwise comparisons! It seems like you could display your pairwise p values on a matrix instead. Would this work? –  Hooked Jul 17 '12 at 19:56
Are you just trying to achieve the plot attached, or do you really want a matrix as @Hooked suggested? –  pelson Jul 17 '12 at 21:33
Most of the time one would not need to compare all the possible pairs. As in the above case, comparing (A,C) or (A,D) or (B,D) would not give any new information. So ideally, I would like to compare selected pairs, say in one case it can be (A,B), (B,C) and (C,D) (as above) and in case it can be (A,B),(A,C) and (A,D). –  imsc Jul 18 '12 at 6:12
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I've done a couple of things here that I suggest when working with complex plots. Pull out the custom formatting into a dictionary, it makes life simple when you want to change a parameter - and you can pass this dictionary to multiple plots. I've also written a custom function to annotate the itervalues, as a bonus it can annotate between (A,C) if you really want to (I stand by my comment that this isn't the right visual approach however). It may need some tweaking once the data changes but this should put you on the right track.

import numpy as np
import matplotlib.pyplot as plt
menMeans   = (5, 15, 30, 40)
menStd     = (2, 3, 4, 5)
ind  = np.arange(4)    # the x locations for the groups
width= 0.7
labels = ('A', 'B', 'C', 'D')

# Pull the formatting out here
bar_kwargs = {'width':width,'color':'y','linewidth':2,'zorder':5}
err_kwargs = {'zorder':0,'fmt':None,'lw':2,'ecolor':'k'}

X = ind+width/2

fig, ax = plt.subplots()
ax.p1 = plt.bar(ind, menMeans, **bar_kwargs)
ax.errs = plt.errorbar(X, menMeans, yerr=menStd, **err_kwargs)

# Custom function to draw the diff bars

def label_diff(i,j,text,X,Y):
x = (X[i]+X[j])/2
y = 1.1*max(Y[i], Y[j])
dx = abs(X[i]-X[j])

props = {'connectionstyle':'bar','arrowstyle':'-',\
'shrinkA':20,'shrinkB':20,'lw':2}
ax.annotate(text, xy=(X[i],y+7), zorder=10)
ax.annotate('', xy=(X[i],y), xytext=(X[j],y), arrowprops=props)

# Call the function
label_diff(0,1,'p=0.0370',X,menMeans)
label_diff(1,2,'p<0.0001',X,menMeans)
label_diff(2,3,'p=0.0025',X,menMeans)

plt.ylim(ymax=60)
plt.xticks(X, labels, color='k')
plt.show()

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Thanks a lot. Very informative. I just change ax.annotate(text, xy=(X[i],y+7), zorder=10) to ax.annotate(text, xy=(x,y+7), zorder=10) to make the p-values centered. –  imsc Jul 18 '12 at 15:28
@imsc That's what I used at first, but that is the location of the left side of the text block - not the center of the text block. To me it seems that that are slightly off-center with that placement. Either way, I hope you see how you can tweak away! –  Hooked Jul 18 '12 at 15:49
Oh yeah, I also put ha='center' in annotate. –  imsc Jul 18 '12 at 16:38