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When using pandas stats.moments.rolling_mean(array,window) function I noticed that putting an extra argument changes the output, and is only padded with nans in the beginning not the end.

In[1]: import pandas as pd

In[2]: pd.stats.moments.rolling_mean(np.arange(12),6)
array([ nan,  nan,  nan,  nan,  nan,  2.5,  3.5,  4.5,  5.5,  6.5,  7.5,

I expected there to be 6 nans: 3 at the beginning and 3 at the end.
What am I missing here?


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closed as too localized by Andy Hayden, ЯegDwight, rene, Frank van Puffelen, Beerlington Dec 8 '12 at 14:13

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up vote 3 down vote accepted

The pandas implementation uses a rolling window of the previous n values, which is how it's usually done in finance (see this Wikipedia entry for simple moving average).

I guess it would be nice to have the option to specify whether the values should be taken from either side or just use previous values - you can raise an issue on GitHub.

len(np.arange(12)) and len(pd.stats.moments.rolling_mean(np.arange(12),6)) both equal 12 as I would have expected - what result were you expecting?

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I have faced this with rolling statistics in pandas, too. I'd say for non-time-related measurements, such as an altitude vs. distance profile, a central-based moving window makes more sense, since it does not introduce lag or shift. Now for time-based measurements, I think taking only previous values makes more sense, since it would be conceptually wrong if "future" values influenced present ones. – heltonbiker Dec 7 '12 at 21:17
The actual function implementation is around line 949 of this file: It's relatively comfortable to see that it is implemented at a pretty low level. – heltonbiker Dec 7 '12 at 21:21
Sorry for the late post here. My data is relative humidity time series but the data has repeating aliasing effects that creates a "saw-like" curve instead of a smooth one. I used the pandas function and the results matched what I could create myself: a smooth curve that takes the mean of the first 6 points and the following 6 points. Of course you can specify the lag and lead times. The results looks very good. Thanks for your help. – Shejo284 Jan 10 '13 at 17:49

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