How do I convert an existing dataframe with single-level columns to have hierarchical ~~index~~ columns (MultiIndex)?

Example dataframe:

```
In [1]:
import pandas as pd
from pandas import Series, DataFrame
df = DataFrame(np.arange(6).reshape((2,3)),
index=['A','B'],
columns=['one','two','three'])
df
Out [1]:
one two three
A 0 1 2
B 3 4 5
```

I'd have thought that reindex() would work, but I get NaN's:

```
In [2]:
df.reindex(columns=[['odd','even','odd'],df.columns])
Out [2]:
odd even odd
one two three
A NaN NaN NaN
B NaN NaN NaN
```

Same if I use DataFrame():

```
In [3]:
DataFrame(df,columns=[['odd','even','odd'],df.columns])
Out [3]:
odd even odd
one two three
A NaN NaN NaN
B NaN NaN NaN
```

This last approach actually does work if I specify df.values:

```
In [4]:
DataFrame(df.values,index=df.index,columns=[['odd','even','odd'],df.columns])
Out [4]:
odd even odd
one two three
A 0 1 2
B 3 4 5
```

What's the proper way to do this? Why does reindex() give NaN's?