5

I have some problems regarding the rolling_std function of pandas.stats.moments. Strangely I get different results using this functionality compared to the numpy.std function applied to a rolling window over an array.

here is the code to reproduce this error:

# import the modules
import numpy as np
import pandas as pd

# define timeseries and sliding window size
timeseries = np.arange(10)
periods = 4

# output of different results
pd.stats.moments.rolling_std(timeseries, periods)
[np.std(timeseries[max(i-periods+1,0):i+1]) for i in np.arange(10)]

Yielding:

#pandas
array([        nan,         nan,         nan,  1.29099445,  1.29099445,
    1.29099445,  1.29099445,  1.29099445,  1.29099445,  1.29099445])
#numpy
[0.0, 0.5, 0.81649658092772603, 1.1180339887498949, 1.1180339887498949, 1.1180339887498949, 1.1180339887498949, 1.1180339887498949, 1.1180339887498949, 1.1180339887498949]

If I calculate this by hand the numpy results seems to be correct. Has anyone encountered this before or has an explanation?

6

Pandas' rolling_std is computed using default delta degrees of freedom, ddof, equal to 1, being more like R in that aspect. While default ddof for numpy's std is 0. You will get the equivalent results while specifying ddof=1 for np.std

>>> [np.std(timeseries[max(i-periods+1,0):i+1], ddof=1) for i in np.arange(10)]
[nan, 0.70710678118654757, 1.0, 1.2909944487358056, 1.2909944487358056, 1.2909944487358056, 1.2909944487358056, 1.29099444873580
56, 1.2909944487358056, 1.2909944487358056]

Or ddof=0 for rolling_std:

>>> pd.stats.moments.rolling_std(timeseries, periods, ddof=0)
array([        nan,         nan,         nan,  1.11803399,  1.11803399,
        1.11803399,  1.11803399,  1.11803399,  1.11803399,  1.11803399])

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.