I have two arrays:

```
import numpy as np
a = np.array(['1','2','3'])
b = np.array(['3','4','1','5'])
```

I want to calculate joint entropy. I've found some materials to make it like:

```
import numpy as np
def entropy(*X):
return = np.sum(-p * np.log2(p) if p > 0 else 0
for p in (np.mean(reduce(np.logical_and, (predictions == c for predictions, c in zip(X, classes))))
for classes in itertools.product(*[set(x) for x in X])))
```

Seems to work fine with `len(a) = len(b)`

but it ends with error if `len(a) != len(b)`

UPD: Arrays `a`

and `b`

were created from exampled main input:

```
b:3 p1:1 p2:6 p5:7
b:4 p1:2 p7:2
b:1 p3:4 p5:8
b:5 p1:3 p4:4
```

Where array `a`

was created from p1 values. So not every line consists of every `pK`

but every has `b`

property. I need to calculate mutual information `I(b,pK)`

for each `pK`

.

`import numpy as np`

and`np.array([..])`

just wanted to show you what kind of data I'm using. Data is int chars (so it doesnt matter what to use I think). – aromatvanili Sep 16 '13 at 12:50