## Meaning of `n`

First of all, the `n`

in `n-1`

refers to the number of **dimensions** in each of the dataframes, not the number of dataframes. You can see that from the source code at lines 938ff:

```
def _get_new_axes(self):
ndim = self._get_result_dim()
new_axes = [None] * ndim
if self.join_axes is None:
for i in range(ndim):
if i == self.axis:
continue
new_axes[i] = self._get_comb_axis(i)
else:
if len(self.join_axes) != ndim - 1:
raise AssertionError("length of join_axes must not be "
"equal to {0}".format(ndim - 1))
```

(Therefore, it should really not read `n-1`

in the documentation. I guess this formulation is based on the common use example where the index passed with `join_axes`

is that of **one of the dataframes**. The passed index could, though, also be a new, synthetic one.)

## Use of `join_axes`

The actual use `join_axes`

is to **replace** the indexes of the dataframes that you want to concatenate with a different one (or actually one per dimension).

In this process, the values in each dataframe are simply **assigned** to the new indices, ignoring the index it contains. Furthermore, if one of the dataframes is longer (in any dimension) than the corresponding index, it will simply be truncated.

## Merging time series into one dataframe

What you might be trying to achieve is to combine a bunch of `Series`

into a `DataFrame`

and preserve their original (partially) non-matching indices.

```
pandas.concat([df1,..,dfn], axis=1, join='outer')
```

does that (with `join=outer`

).

(However, when you want to plot the resulting dataframe, you might need to find a workaround, because all columns are interrupted by NaNs.)