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I need to find all indices where the maximum value (per row) is obtained in a Pandas DataFrame. For instance, if I have a dataFrame like this:

   cat1  cat2  cat3
0     0     2     2
1     3     0     1
2     1     1     0

then the method I am looking for would yield a result like:

[['cat2', 'cat3'],
 ['cat1', 'cat2']]

This is a list of lists, but some other data structure is also okay.

I cannot use df.idxmax(axis=1), because it only yields the first maximum.

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1 Answer 1

up vote 3 down vote accepted

Here is the information, in a different data structure:

In [8]: df = pd.DataFrame({'cat1':[0,3,1], 'cat2':[2,0,1], 'cat3':[2,1,0]})

In [9]: df
   cat1  cat2  cat3
0     0     2     2
1     3     0     1
2     1     1     0

[3 rows x 3 columns]

In [10]: rowmax = df.max(axis=1)

The max values are indicated by True values:

In [82]: df.values == rowmax[:,None]
array([[False,  True,  True],
       [ True, False, False],
       [ True,  True, False]], dtype=bool)

np.where returns the indices where the DataFrame above is True.

In [84]: np.where(df.values == rowmax[:,None])
Out[84]: (array([0, 0, 1, 2, 2]), array([1, 2, 0, 0, 1]))

The first array indicates index values for axis=0, the second array for axis=1. There are 5 values in each array since there are five locations that are True.

You could use itertools.groupby to build the list of lists you posted, though perhaps you don't need this given the data structures above:

In [46]: import itertools as IT

In [47]: import operator

In [48]: idx = np.where(df.values == rowmax[:,None])

In [49]: groups = IT.groupby(zip(*idx), key=operator.itemgetter(0))

In [50]: [[df.columns[j] for i, j in grp] for k, grp in groups]
Out[50]: [['cat1', 'cat1'], ['cat2'], ['cat3', 'cat3']]
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df==DataFrame(np.tile(rowmax,len(df)).reshape(df.shape).T,index=df.index,column‌​s=df.columns) will get your boolean frame (kind of like a broadcasted comparison operator); faster, but prob not more clear than the apply –  Jeff Feb 7 '14 at 14:08
@Jeff: Good idea. df.values == rowmax[:,None] is about 10x faster still. –  unutbu Feb 7 '14 at 14:27
Thanks a lot! Unless I'm mistaken, your last line should read [[df.columns[j] for i, j in grp] for k, grp in groups] no? –  RafG Feb 7 '14 at 15:34
@unutbu actually I think their is an open issue to make broadcast able comparisons ( eg like div,mul and such) - can u link this too it (.or create and issue if their isn't one) thanks –  Jeff Feb 7 '14 at 16:13
@RafG: Oops! Thanks for the correction. –  unutbu Feb 7 '14 at 20:16

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