I traced it out, it really is a bug in the `plot_fit`

code. In the stable version you will find this line:

```
prstd, iv_l, iv_u = wls_prediction_std(results)
```

which returns `iv_l`

and `iv_u`

, presumably the upper and lower values for plotting the standard deviation of the fitted values, as pandas Series. This causes the subsequent call to `ax.fill_between`

to fail.

This seems to have been fixed in the development version https://github.com/statsmodels/statsmodels/blob/master/statsmodels/graphics/regressionplots.py . There you will find a different call:

```
prstd, iv_l, iv_u = wls_prediction_std(results._results)
```

`iv_l`

and `iv_u`

are now numpy array and there should be no error anymore if you do:

```
smg.regressionplots.plot_fit(sm.OLS(data['Y'], data['X']).fit(), 0, y_true=None)
```

For now you'll just have to be satisfied with

```
smg.regressionplots.plot_fit(sm.OLS(data.Y.values, data.X.values).fit(), 0, y_true=None)
```

even though it's not really consistent with the usual call to standard linear regression.

`lm = sm.OLS(data['Y'], data['X']).fit(); lm.summary()`

So it's kind of unexpected behaviour that plotting it using almost the same syntax doesn't work. – herrfz Mar 20 '13 at 20:06