7

I would like to draw a boxplot for the following pandas dataframe:

> p1.head(10)

   N0_YLDF    MAT
0     1.29  13.67
1     2.32  10.67
2     6.24  11.29
3     5.34  21.29
4     6.35  41.67
5     5.35  91.67
6     9.32  21.52
7     6.32  31.52
8     3.33  13.52
9     4.56  44.52

I want the boxplots to be of the column 'N0_YLDF', but they should be stratified by 'MAT'. When I use the foll. command:

p1.boxplot(column='N0_YLDF',by='MAT')

It uses all the unique MAT values, which in the full p1 dataframe number around 15,000. This results in an incomprehensible boxplot.

Is there any way I can stratify the MAT values, so that I get a different boxplot of N0_YLDF for the first quartile of MAT values and so on....

thanks!

2 Answers 2

10

Pandas has the cut and qcut functions to make stratifying variables like this easy:

# Just asking for split into 4 equal groups (i.e. quartiles) here,
# but you can split on custom quantiles by passing in an array
p1['MAT_quartiles'] = pd.qcut(p1['MAT'], 4, labels=['0-25%', '25-50%', '50-75%', '75-100%'])
p1.boxplot(column='N0_YLDF', by='MAT_quartiles')

Output:

enter image description here

3
  • @Marius want to do a pull request to add this to cookbook.rst? pls do it inline so the figure shows with the code as well - include a link to this question as well - thanks
    – Jeff
    Apr 23, 2014 at 1:35
  • @Jeff: Sure, I'll try to get round to it tonight. I've been meaning to see if there were any useful contributions I could add to pandas, this looks like a good place to start.
    – Marius
    Apr 23, 2014 at 1:47
  • great! FYI wanted to put more of the cookbook examples inline (they r mostly links now), so that would be extremely helpful if u have some time!
    – Jeff
    Apr 23, 2014 at 2:11
6

pandas.qcut will give you the quantiles, but a histogram-like operation will require some numpy trickery which comes in handy here:

_, breaks = np.histogram(df.MAT, bins=5)
ax = df.boxplot(column='N0_YLDF', by='Class')
ax.xaxis.set_ticklabels(['%s'%val for i, val in enumerate(breaks) if i in df.Class])

enter image description here

The dataframe now looks like this:

   N0_YLDF    MAT  Class
0     1.29  13.67      1
1     2.32  10.67      0
2     6.24  11.29      1
3     5.34  21.29      1
4     6.35  41.67      2
5     5.35  91.67      5
6     9.32  21.52      1
7     6.32  31.52      2
8     3.33  13.52      1
9     4.56  44.52      3

[10 rows x 3 columns]

It can also be used to get the quartile plot:

breaks = np.asarray(np.percentile(df.MAT, [25,50,75,100]))
df['Class'] = (df.MAT.values > breaks[..., np.newaxis]).sum(0)
ax = df.boxplot(column='N0_YLDF', by='Class')
ax.xaxis.set_ticklabels(['%s'%val for val in breaks])

enter image description here

5
  • This is great, thank you so much again! Is there any way you can replace the x-axis labels by the actual MAT quantile value?
    – user308827
    Apr 23, 2014 at 1:18
  • 1
    That's easy, you can just use the values of breaks, if the plot is returned as ax: add this ax.xaxis.set_ticklabels(['%s'%val for i, val in enumerate(breaks) if i in df.Class]), the breaks contains the bin edges of the histogram.
    – CT Zhu
    Apr 23, 2014 at 1:24
  • thanks for the further edits. I am trying to change the color of the boxes in the boxplot using pyplot.setp(ax['boxes'], color='blue'). however I get the error ''AxesSubplot' object is unsubscriptable'. Any idea on how to avoid this error? thanks!
    – user308827
    Apr 23, 2014 at 2:25
  • Ah, I found this reply of yours (@ CT Zhu) for the boxplot styling. that works: stackoverflow.com/questions/19453994/…
    – user308827
    Apr 23, 2014 at 2:56
  • Happy to hear that. Sometimes I even find my own answers. Happy coding!
    – CT Zhu
    Apr 23, 2014 at 3:07

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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