Reconstructing your `DataFrame`

:

```
In [1]: index = MultiIndex.from_tuples(zip([21,22,23],[45,45,46]), names=['A', 'B'])
In [2]: df = DataFrame({0:[0.01, 0.30, 0.45],
1:[0.56, 0.88, 0.23],
2:[0.23, 0.53, 0.90],
'ref': [0.02, 0.87, 0.23]}, index=index)
In [3]: df
Out[3]:
0 1 2 ref
A B
21 45 0.01 0.56 0.23 0.02
22 45 0.30 0.88 0.53 0.87
23 46 0.45 0.23 0.90 0.23
```

I would first get the absolute distance of columns`0`

, `1`

and `2`

from `ref`

:

```
In [4]: dist = df[[0,1,2]].sub(df['ref'], axis=0).apply(np.abs)
In [5]: dist
Out[5]:
0 1 2
A B
21 45 0.01 0.54 0.21
22 45 0.57 0.01 0.34
23 46 0.22 0.00 0.67
```

Given now `dist`

you can determine the column with the min value by row using `DataFrame.idxmin`

:

```
In [5]: idx = dist.idxmin(axis=1)
In [5]: idx
Out[5]:
A B
21 45 0
22 45 1
23 46 1
```

To now generate your new `closest`

, then you simply need to use `idx`

to index `df`

:

```
In [6]: df['closest'] = idx.index.map(lambda x: df.ix[x][idx.ix[x]])
In [7]: df
Out[7]:
0 1 2 ref closest
A B
21 45 0.01 0.56 0.23 0.02 0.01
22 45 0.30 0.88 0.53 0.87 0.88
23 46 0.45 0.23 0.90 0.23 0.23
```

For the last step, there might be a more elegant way to do it but I'm relatively new to Pandas and that's the best I can think of right now.