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I have a data frame with 3 boolean columns:

    A     B     C
0   True  False False
1   False True  False
2   True  Nan   False
3   False False True
...

Only one column is true at each time, but there can be Nan.

I would like to get a list of column names where the name is chosen based on the boolean. So for the example above:

['A', 'B', 'A', 'C']

it's a simple matrix operation, not sure how to map it to pandas...

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up vote 2 down vote accepted

You can use the mul operator between the dataframe and the dataframe columns. That results in True cells containing the column name and False cells empty. Eventually you can just sum the row data:

df.mul(df.columns).sum(axis=1)
Out[44]: 
0    A
1    B
2    A
3    C
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You can index columns names, i.e. df.columns, with proper indexes:

>>> import numpy as np
>>> df.columns[(df * np.arange(df.values.shape[1])).sum(axis=1)]
Index([u'A', u'B', u'A', u'C'], dtype=object)

Explanation.

Expression

>>> df * np.arange(df.values.shape[1])
   A  B  C
0  0  0  0
1  0  1  0
2  0  0  0
3  0  0  2

calculates for each column a proper index, then matrix is summed row-wize with

>>> (df * np.arange(df.values.shape[1])).sum(axis=1)
0    0
1    1
2    0
3    2
dtype: int32
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maybe this:

[ df.columns[ row.fillna( False ) ][ 0 ] for idx, row in df.iterrows( ) ]

this will work as long as there is True in each row

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