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import numpy as np
import pandas as pd
import statsmodels.api as sm
import statsmodels.graphics as smg

data = pd.DataFrame({'Y': np.random.rand(1000), 'X':np.random.rand(1000)})

This works

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

This doesn't

smg.regressionplots.plot_fit(sm.OLS(data.Y, data.X).fit(), 0, y_true=None)
smg.regressionplots.plot_fit(sm.OLS(data['Y'], data['X']).fit(), 0, y_true=None)
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So what's the question? –  NPE Mar 20 '13 at 19:43
I expected both to work. Is not working a bug or a usage issue? –  user1827356 Mar 20 '13 at 19:44
Rather strange indeed, I think it's a bug. I know that simply doing linear regression (i.e. without plotting) works with pandas Series: 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

2 Answers 2

up vote 2 down vote accepted

The error message reveals what's going on. Condensing:

/usr/lib/pymodules/python2.7/matplotlib/axes.pyc in fill_between(self, x, y1, y2, where, interpolate, **kwargs)

   6542                 start = xslice[0], y2slice[0]
-> 6543                 end = xslice[-1], y2slice[-1]

/usr/local/lib/python2.7/dist-packages/pandas-0.11.0.dev_fc8de6d-py2.7-linux-i686.egg/pandas/core/index.pyc in get_value(self, series, key)

    725         try:
--> 726             return self._engine.get_value(series, key)
    727         except KeyError, e1:
    728             if len(self) > 0 and self.inferred_type == 'integer':


KeyError: -1L

data.X and data.Y are Series objects, and you can't get the last element using [-1]. If you could, then you could get yourself into trouble when you had an index which used -1 as one of its elements: did you want the last element, or the one associated with -1?

pandas respected the "in the face of ambiguity, refuse the temptation to guess" principle, and chose not to let this work, prioritizing labels over location. You get a KeyError, not an IndexError, which hints at this. See the discussion in the docs on advanced indexing with integer labels, for example.

share|improve this answer
+1 Makes sense and helps me proceed. But I would assume this would cause more than a few breaks as np.array(range(1,10))[-1] works. Is there some effort underway to address this? –  user1827356 Mar 20 '13 at 20:09
:-( Apparently I didn't explain it well enough. A Series object is a fundamentally different kind of object than an ndarray. In many ways, it's more like an ordered dict with some arraylike operations. That's how you can get nice alignment on the indexes. Certain operations which only require iteration will work on Series, but numeric indexing won't, in general. –  DSM Mar 20 '13 at 20:23
[By "numeric indexing" I mean "position-based indexing."] –  DSM Mar 20 '13 at 20:31
@DSM but the fact that sm.OLS(data['Y'], data['X']).fit() actually works shows that statsmodels supports pandas Series for regression (which, to me as a user, means that I don't need to know the internals of the indexing and such), but not the plotting of its result, which is kind of inconsistent, don't you think? –  herrfz Mar 20 '13 at 20:46
The explanation was sufficient. But my first thought was that libraries such as matplotlib will choose to maintain compatibility with ndarray over Series. For instance, in this example y2slice[-1] will have to be replaced with something that would have to work for both ndarray and Series. Is there such an indexing? –  user1827356 Mar 20 '13 at 20:48

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.

share|improve this answer
As you pointed out, this should be fixed in master. Please file any bug reports on github, so we can have a look. github.com/statsmodels/statsmodels/issues –  jseabold Mar 20 '13 at 22:30
Sure, if you find it useful. I just thought that since it's fixed you're probably aware of the issue already... –  herrfz Mar 20 '13 at 22:42

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