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