# Pandas: Using rolling_mean() with maximum information criteria as a Smoothing Function?

I would like to use pd.rolling_mean() as a smoothing function keeping the maximum information criteria. This means the endpoints are computed differently depending on the information available. An example of a window=3, center=True is below:

``````For Example: Window = 3, Center = True
ts_smooth[0] = 1/2 * ts[0] + 1/2 * ts[1]
ts_smooth[0<n<N-1] = 1/3 * ts[n-1] + 1/3 * ts[n] + 1/3 * ts[n+1]
ts_smooth[N] = 1/2 * ts[N-1] + 1/2 * ts[N]
``````

What is the best way to achieve this in Pandas?

1. Compute rolling_mean() for midpoints
2. Write a function to replace the end conditions based on window size?
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The keyword argument `min_periods` may be relavant. `pd.rolling_mean(np.arange(5), 3, center=True, min_periods=0)` gives `[ 0.5, 1. , 2. , 3. , nan]`. On the right track. –  Dan Allan Mar 5 '13 at 2:47
Mysteriously, any value passed to `min_periods` changes the first element of the result from `nan` to `0`. That may be a bug. –  Dan Allan Mar 5 '13 at 2:54
Without setting centre as True, for any i-th element, if first collect elements in the periods [i-2, i-1, i], if the number of elements found in these periods is smaller than min_periods, than it returns nan. While you set min_periods as 1, it only collect the element 0, so it returns the mean 0. Once you set min_periods more than 1, it'll return nan since you only collect 1 element. –  waitingkuo Mar 5 '13 at 3:35

you could use the shift function, like so,

``````ts_shiftedPlus = ts.shift(1)
ts_shiftedMinus = ts.shift(-1)

ts_smooth = 1/3 * ts_shiftedMinus + 1/3 * ts + 1/3 * ts_shiftedPlus
ts_smooth.ix[0] = 1/2 * ts.ix[0] + 1/2 * ts.ix[1]
N = len(ts)
ts_smooth.ix[N] = 1/2 * ts.ix[N-1] + 1/2 * ts.ix[N]
``````
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This works well ... for endpoints. However, if there is missing data within the series - that takes a bit more work. I will work on a function for this. –  sanguineturtle May 22 '13 at 5:33