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 = 1/2 * ts + 1/2 * ts 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?
- Compute rolling_mean() for midpoints
- Write a function to replace the end conditions based on window size?