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I have a DataFrame with many missing values in columns which I wish to groupby:

import pandas as pd
import numpy as np
df = pd.DataFrame({'a': ['1', '2', '3'], 'b': ['4', np.NaN, '6']})

In [4]: df.groupby('b').groups
Out[4]: {'4': [0], '6': [2]}

see that Pandas has dropped the rows with NaN target values. (I want to include these rows!)

Since I need many such operations (many cols have missing values), and use more complicated functions than just medians (typically random forests), I want to avoid writing too complicated pieces of code.

Any suggestions? Should I write a function for this or is there a simple solution?

share|improve this question
Please show some code and a toy data set that recreates the issue you're having, otherwise this will probably be closed or put on hold. – Phillip Cloud Aug 25 '13 at 13:40
@PhillipCloud I've edited this question to include just the question, which is actual quite good, relating to open pandas enhancement of Jeff's. – Andy Hayden Aug 25 '13 at 17:13

This is mentioned in the Missing Data section of the docs:

NA groups in GroupBy are automatically excluded. This behavior is consistent with R, for example.

One workaround is to use a placeholder before doing the groupby (e.g. -1):

In [11]: df.replace(np.nan, -1)
   a   b
0  1   4
1  2  -1
2  3   6

In [12]: df.replace(np.nan, -1).groupby('b').sum()
-1  2
4   1
6   3

That said, this feels pretty awful hack... perhaps there should be an option to include NaN in groupby (see this github issue - which uses the same placeholder hack).

share|improve this answer
This is a logical but a sort of funny solution that I've thought of earlier, Pandas makes NaN fields from the empty ones, and we have to change them back. This is the reason that I'm thinking of looking for other solutions like running an SQL server and querying the tables from there (looks a bit too complicated), or looking another library in spite of Pandas, or use my own (that I want to get rid of). Thx – Gyula Sámuel Karli Aug 26 '13 at 20:52
@GyulaSámuelKarli To me this seems a small bug (see the bugreport above), and my solution is a workaround. I find it strange you write off the entire library. – Andy Hayden Aug 26 '13 at 21:02
I don't want to write down Pandas just look for the tool that fits my requests the most. – Gyula Sámuel Karli Aug 26 '13 at 21:08
But what if you do not want to change the NaNs with different values? Is there no way to use the sum method incorporating NaNs? (for instance, like the dataframe sum method df.sum(skipna=True):… – Guido Jan 12 at 10:08
@Guido This question is about the groupby key being NaN, so I'm not sure I follow the question. – Andy Hayden Jan 12 at 17:40

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