Say I have the same dataframe from this question:

    A0      A1      A2      B0      B1      B2      C0      C1
0   0.84    0.47    0.55    0.46    0.76    0.42    0.24    0.75
1   0.43    0.47    0.93    0.39    0.58    0.83    0.35    0.39
2   0.12    0.17    0.35    0.00    0.19    0.22    0.93    0.73
3   0.95    0.56    0.84    0.74    0.52    0.51    0.28    0.03
4   0.73    0.19    0.88    0.51    0.73    0.69    0.74    0.61
5   0.18    0.46    0.62    0.84    0.68    0.17    0.02    0.53
6   0.38    0.55    0.80    0.87    0.01    0.88    0.56    0.72

But instead of wanting to return the minimum value of each row (of only B0, B1, B2)

    A0      A1      A2      B0      B1      B2      C0      C1      Minimum
0   0.84    0.47    0.55    0.46    0.76    0.42    0.24    0.75    0.42
1   0.43    0.47    0.93    0.39    0.58    0.83    0.35    0.39    0.39
2   0.12    0.17    0.35    0.00    0.19    0.22    0.93    0.73    0.00
3   0.95    0.56    0.84    0.74    0.52    0.51    0.28    0.03    0.51
4   0.73    0.19    0.88    0.51    0.73    0.69    0.74    0.61    0.51
5   0.18    0.46    0.62    0.84    0.68    0.17    0.02    0.53    0.17
6   0.38    0.55    0.80    0.87    0.01    0.88    0.56    0.72    0.01

I want to return the column name which contains the minimum value of each row (of only B0, B1, B2):

    A0      A1      A2      B0      B1      B2      C0      C1      col_of_min
0   0.84    0.47    0.55    0.46    0.76    0.42    0.24    0.75    B2
1   0.43    0.47    0.93    0.39    0.58    0.83    0.35    0.39    B0
2   0.12    0.17    0.35    0.00    0.19    0.22    0.93    0.73    B0
3   0.95    0.56    0.84    0.74    0.52    0.51    0.28    0.03    B2
4   0.73    0.19    0.88    0.51    0.73    0.69    0.74    0.61    B0
5   0.18    0.46    0.62    0.84    0.68    0.17    0.02    0.53    B2
6   0.38    0.55    0.80    0.87    0.01    0.88    0.56    0.72    B1

What's the best way to do this?

up vote 5 down vote accepted

you can use filter() in conjunction with idxmin() method:

In [40]: x
Out[40]:
     A0    A1    A2    B0    B1    B2    C0    C1
0  0.84  0.47  0.55  0.46  0.76  0.42  0.24  0.75
1  0.43  0.47  0.93  0.39  0.58  0.83  0.35  0.39
2  0.12  0.17  0.35  0.00  0.19  0.22  0.93  0.73
3  0.95  0.56  0.84  0.74  0.52  0.51  0.28  0.03
4  0.73  0.19  0.88  0.51  0.73  0.69  0.74  0.61
5  0.18  0.46  0.62  0.84  0.68  0.17  0.02  0.53
6  0.38  0.55  0.80  0.87  0.01  0.88  0.56  0.72

In [41]: x['col_of_min'] = x.filter(like='B').idxmin(axis=1)

In [42]: x
Out[42]:
     A0    A1    A2    B0    B1    B2    C0    C1 col_of_min
0  0.84  0.47  0.55  0.46  0.76  0.42  0.24  0.75         B2
1  0.43  0.47  0.93  0.39  0.58  0.83  0.35  0.39         B0
2  0.12  0.17  0.35  0.00  0.19  0.22  0.93  0.73         B0
3  0.95  0.56  0.84  0.74  0.52  0.51  0.28  0.03         B2
4  0.73  0.19  0.88  0.51  0.73  0.69  0.74  0.61         B0
5  0.18  0.46  0.62  0.84  0.68  0.17  0.02  0.53         B2
6  0.38  0.55  0.80  0.87  0.01  0.88  0.56  0.72         B1
  • 1
    Thanks! And for anyone out there that wants to do this with all columns (except the index column if it's named), try: x['col_of_min'] = x.iloc[:, 1:].idxmin(axis=1) – spacetyper Sep 6 '16 at 18:59
  • @spacetyper, thank you for accepting the answer! Maybe you mean for all columns except the first one (which has index: 0)? – MaxU Sep 6 '16 at 19:02
  • Yeah, that's what I mean--thanks! – spacetyper Sep 6 '16 at 19:11

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