2

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?

1 Answer 1

5

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
2
  • 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, 2016 at 18:59
  • @spacetyper, thank you for accepting the answer! Maybe you mean for all columns except the first one (which has index: 0)? Sep 6, 2016 at 19:02

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.