# Handling zero multiplied with NaN

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:)

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

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 `NaN`s created by naive evaluation of `0 log 0` but do not hide genuine `NaN`s. 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

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))
``````
• 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

You can use a `np.ma.log`, which will mask `0`s 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))
``````