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# How to make a pandas crosstab with percentages?

Given a dataframe with different categorical variables, how do I return a cross-tabulation with percentages instead of frequencies?

``````df = pd.DataFrame({'A' : ['one', 'one', 'two', 'three'] * 6,
'B' : ['A', 'B', 'C'] * 8,
'C' : ['foo', 'foo', 'foo', 'bar', 'bar', 'bar'] * 4,
'D' : np.random.randn(24),
'E' : np.random.randn(24)})

pd.crosstab(df.A,df.B)

B       A    B    C
A
one     4    4    4
three   2    2    2
two     2    2    2
``````

Using the margins option in crosstab to compute row and column totals gets us close enough to think that it should be possible using an aggfunc or groupby, but my meager brain can't think it through.

``````B       A     B    C
A
one     .33  .33  .33
three   .33  .33  .33
two     .33  .33  .33
``````
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Wouldn't you expect the table to be `0.167 0.167 0.167\n 0.083 0.083 0.083\n 0.083 0.083 0.083`? – Warren Weckesser Jan 21 '14 at 1:28
I guess you want specifically the "percent within row" (e.g. en.wikipedia.org/wiki/Crosstab). – Warren Weckesser Jan 21 '14 at 1:42

``````pd.crosstab(df.A, df.B).apply(lambda r: r/r.sum(), axis=1)
``````

Basically you just have the function that does `row/row.sum()`, and you use `apply` with `axis=1` to apply it by row.

(If doing this in Python 2, you should use `from __future__ import division` to make sure division always returns a float.)

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You'd need a `from __future__ import division` to force floating point division on integers. – Brian Keegan Jan 21 '14 at 1:23
That's true. I added that to my answer. (I have my shell set to do this automatically so I always forget it needs to be done.) – BrenBarn Jan 21 '14 at 1:26

If you're looking for a percentage of the total, you can divide by the len of the df instead of the row sum:

``````pd.crosstab(df.A, df.B).apply(lambda r: r/len(df), axis=1)
``````
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Another option is to use div rather than apply:

``````In [11]: res = pd.crosstab(df.A, df.B)
``````

Divide by the sum over the index:

``````In [12]: res.sum(axis=1)
Out[12]:
A
one      12
three     6
two       6
dtype: int64
``````

Similar to above, you need to do something about integer division (I use astype('float')):

``````In [13]: res.astype('float').div(res.sum(axis=1), axis=0)
Out[13]:
B             A         B         C
A
one    0.333333  0.333333  0.333333
three  0.333333  0.333333  0.333333
two    0.333333  0.333333  0.333333
``````
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