I'm working with a Pandas representation of a fairly complex dataset coming in from a survey. So far, it seems like single-dimensional series of variables with multi-indexes are the best fit for storing with and working with this data.

Each variable name is composed of a "path" to uniquely identify that particular response. These paths are of varying length. I'm trying to figure out if I'm misunderstanding how hierarchical indices are supposed to work, or perhaps if I'm running into a bug. It appears as if Pandas "pads" the shorter indices out to the maximum length when joining them to a dataset, and in the process destroys the value.

For instance, this test fails:

```
def test_dataframe_construction1(self):
case1 = pd.Series(True, pd.MultiIndex.from_tuples([
('a1', 'b1', 'c1'),
('a2', 'b2', 'c2', 'd1', 'e1'),
]))
case2 = pd.Series(True, pd.MultiIndex.from_tuples([
('a3', 'b3', 'c3'),
('a4', 'b4', 'c4', 'd2', 'e2'),
]))
df = pd.DataFrame({
'case1': case1,
'case2': case2
})
logger.debug(df)
self.assertEquals(df['case1'].loc['a1'].any(), True)
```

And prints this:

```
a1 b1 c1 nan nan NaN NaN
a2 b2 c2 d1 e1 True NaN
a3 b3 c3 nan nan NaN NaN
a4 b4 c4 d2 e2 NaN True
```

Interestingly, padding out the "shorter" indices with empty string instead of NaN results in the behavior I would expect:

```
def test_dataframe_construction2(self):
case1 = pd.Series(True, pd.MultiIndex.from_tuples([
('a1', 'b1', 'c1', '', ''),
('a2', 'b2', 'c2', 'd1', 'e1'),
]))
case2 = pd.Series(True, pd.MultiIndex.from_tuples([
('a3', 'b3', 'c3', '', ''),
('a4', 'b4', 'c4', 'd2', 'e2'),
]))
df = pd.DataFrame({
'case1': case1,
'case2': case2
})
logger.debug(df)
self.assertEquals(df['case1'].loc['a1'].any(), True)
```

And prints this:

```
case1 case2
a1 b1 c1 True NaN
a2 b2 c2 d1 e1 True NaN
a3 b3 c3 NaN True
a4 b4 c4 d2 e2 NaN True
```

What am I missing here? Thanks!