I'm trying to work out how to use the groupby function in pandas to work out the proportions of values per year with a given Yes/No criteria.

For example, I have a dataframe called names:

  Name  Number  Year   Sex Criteria
0  name1     789  1998  Male      N
1  name1     688  1999  Male      N
2  name1     639  2000  Male      N
3  name2     551  1998  Male      Y
4  name2     499  1999  Male      Y

I can use

namesgrouped = names.groupby(["Sex", "Year", "Criteria"]).sum()

to get:

Sex    Year      Criteria
Male   1998 N        14507
            Y         2308
       1999 N        14119
            Y         2331

and so on. I would like the 'Number Criteria' column to show the % of the total for each gender and year - so instead of N = 14507 and Y = 2308 for 1998 above I'd have N = 86.27% and Y = 13.73%.

Can anyone advise how to do this?

  • 1
    Possible duplicate of Pandas percentage of total with groupby – IanS May 2 '16 at 17:26
  • Unfortunately the example you linked to didn't work for me, as I have an extra layer in by groupby! Does anyone know how to work out the percentage when dealing with a hierarchy like mine? – fuzzy_logic_77 Jul 14 '16 at 21:14

This question is a direct extension of the suggested duplicate. Borrowing from the accepted answer, this will work:

In [46]: namesgrouped.groupby(level=[0, 1]).apply(lambda g: g / g.sum())
Sex  Year Criteria          
Male 1998 N         0.588806
          Y         0.411194
     1999 N         0.579612
          Y         0.420388
     2000 N         1.000000

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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