7

I am trying to estimate the entropy of Random Variables (RVs), which involves a calculation of step: p_X * log(p_X). For example,

import numpy as np
X = np.random.rand(100)   
binX = np.histogram(X, 10)[0] #create histogram with 10 bins
p_X = binX / np.sum(binX)
ent_X = -1 * np.sum(p_X * np.log(p_X))

Sometimes p_X shall be zero which mathematically make the whole term as zero. But python makes p_X * np.log(p_X) as NaN and makes the whole summation as NaN. Is there any way to manage (without any explicit checking for NaN) making p_X * np.log(p_X) to give zero whenever p_X is zero? Any insight and correction is appreciated and Thanks in advance:)

  • 1
    ..give zero whenever p_X is zero... A simple if condition? – B001ᛦ Jun 19 at 10:21
  • 1
    scipy.special.xlogy? – Paul Panzer Jun 19 at 10:22
6

If you have scipy, use scipy.special.xlogy(p_X,p_X). Not only does it solve your problem, as an added benefit it is also a bit faster than p_X*np.log(p_X).

  • It's worth noting that xlogy(0, float("nan")) returns nan, not 0. So for the case where you are doing xlogy(x, y) and want the result to be 0 whenever x == 0 and y <= 0, then this solution works. But if y could be a nan value, then you'll still have the possibility of returning a nan value. – SJL Jun 19 at 19:16
  • @SJL which is the correct behavior: suppress bogus NaNs created by naive evaluation of 0 log 0 but do not hide genuine NaNs. Besides, OP has x==y, so this cannot happen. – Paul Panzer Jun 19 at 21:34
  • I wasn't implying that the behavior was incorrect, just that some people might incorrectly assume that xlogy(0, nan) returned 0. – SJL Jun 19 at 21:47
  • @SJL Nor was I implying you were implying ;-) Btw. OP's headline is misleading as log 0 doesn't return NaN but -infty, it is the subsequent multiplication that makes it NaN. – Paul Panzer Jun 19 at 22:19
4

In your case you can use nansum since adding 0 in sum is the same thing as ignoring a NaN:

ent_X = -1 * np.nansum(p_X * np.log(p_X))
  • 1
    The problem with that solution is that it will silently eat NaNs produced by other operations than p_X being zero. Presumably, the OP would prefer NaNs to be kept if one of the p_X is <0, for instance (judging by without any explicit checking for NaN). – Leporello Jun 19 at 11:19
  • @Leporello that's true – Dan Jun 19 at 12:10
4

You can use a np.ma.log, which will mask 0s and use the filled method to fill the masked array with 0:

np.ma.log(p_X).filled(0)

For instance:

np.ma.log(range(5)).filled(0)
# array([0.        , 0.        , 0.69314718, 1.09861229, 1.38629436])

X = np.random.rand(100)   
binX = np.histogram(X, 10)[0] #create histogram with 10 bins
p_X = binX / np.sum(binX)
ent_X = -1 * np.sum(p_X * np.ma.log(p_X).filled(0))

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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