This seems like a trivial question, but I've been searching for a while and can't seem to find an answer. It also seems like something that should be a standard part of these packages. Does anyone know if there is a standard way to include statistical annotation between distribution plots in seaborn?

For example, between two box or swarmplots?

Example: the yellow distribution is significantly different than the others (by wilcoxon - how can i display that visually?

  • 1
    you need to pull out the underlying matplotlib Axes object and use Axes.text or Axes.annotate – Paul H Apr 12 '16 at 19:47
  • Do you happen to have an R example to compare to? (MVCE! give us any common dataset with code, and an explanation of what you wanted to get.) – cphlewis Apr 12 '16 at 21:50
  • A good example of what I believe github.com/jbmouret/matplotlib_for_papers – thescoop May 28 '16 at 12:08
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    A good example of what I believe @cancerconnector requires can be found here (at the very bottom of the page): github.com/jbmouret/matplotlib_for_papers This implementation is pure matplotlib, What is needed here is the p-value (stars) annotation applied to a seaborn plot. – thescoop May 28 '16 at 12:26
  • So many years post-DTC, I discover you are asking exactly the same questions as me on SO! The manual approach works, but gets a bit messy if you're trying to show a lot of different comparisons. Did you find any other method? Thanks. – Gabriel Feb 5 '17 at 8:14

Here how to add statistical annotation to a Seaborn box plot:

import seaborn as sns, matplotlib.pyplot as plt

tips = sns.load_dataset("tips")
sns.boxplot(x="day", y="total_bill", data=tips, palette="PRGn")

# statistical annotation
x1, x2 = 2, 3   # columns 'Sat' and 'Sun' (first column: 0, see plt.xticks())
y, h, col = tips['total_bill'].max() + 2, 2, 'k'
plt.plot([x1, x1, x2, x2], [y, y+h, y+h, y], lw=1.5, c=col)
plt.text((x1+x2)*.5, y+h, "ns", ha='center', va='bottom', color=col)


And here the result: box plot annotated

  • How would you implement this with a hue? – Sosi Oct 31 at 11:38

One may also be interested in adding several annotations to different pairs of boxes. In such a case, it might be useful to handle the placement of the different lines and texts in the y-axis automatically. I and other contributors wrote a small function to handle these cases (see Github repo), which correctly stacks the lines one on top of each other without overlapping. Annotations can be either inside or outside the plot, and several statistical tests are implemented: Mann-Whitney and t-test (independent and paired). Here is one minimal example.

import matplotlib.pyplot as plt
import seaborn as sns
from statannot import add_stat_annotation

df = sns.load_dataset("tips")

x = "day"
y = "total_bill"
order = ['Sun', 'Thur', 'Fri', 'Sat']
ax = sns.boxplot(data=df, x=x, y=y, order=order)
add_stat_annotation(ax, data=df, x=x, y=y, order=order,
                    box_pairs=[("Thur", "Fri"), ("Thur", "Sat"), ("Fri", "Sun")],
                    test='Mann-Whitney', text_format='star', loc='outside', verbose=2)


x = "day"
y = "total_bill"
hue = "smoker"
ax = sns.boxplot(data=df, x=x, y=y, hue=hue)
add_stat_annotation(ax, data=df, x=x, y=y, hue=hue,
                    box_pairs=[(("Thur", "No"), ("Fri", "No")),
                                 (("Sat", "Yes"), ("Sat", "No")),
                                 (("Sun", "No"), ("Thur", "Yes"))
                    test='t-test_ind', text_format='full', loc='inside', verbose=2)
plt.legend(loc='upper left', bbox_to_anchor=(1.03, 1))


  • The function name is "add_stat_annotation", the one above isn't working. Also you need to define x and y: add_stat_annotation(ax, x="day", y="total_bill",df, [("Thur", "Fri"), ("Thur", "Sat"), ("Fri", "Sun")], test='t-test', order=None, textFormat='full', loc='inside', verbose=2) – aLbAc Mar 1 at 18:28
  • Thanks for pointing it out. I edited the answer to reflect the changes in the statannot package. Note that now it can also be applied to a boxplot with hue categories, as in the second example. Unfortunately, we still need to give the same exact data, x, y and hue arguments to the add_stat_annotation method than those used to generate the seaborn boxplot. – fokkerplanck Mar 4 at 9:16
  • boxPairList and textFormat arguments are outdated, should be box_pairs and text_format – Qinsi Sep 3 at 6:25
  • Extremely grateful for this! Can I please ask why you require python3? Can it be used in python2 as well? Thanks. – Harry R. Nov 22 at 14:24
  • The statannot package has only been test for python3, but could be adapted to python2. – fokkerplanck Nov 23 at 16:23

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