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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.

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This is just a guess, but make sure zip is what you want and not something like itertools.izip_longest. –  Colonel Panic Sep 16 '13 at 12:39
You can not build a numpy array this way. Perhaps a pair of parens is missing? Also: What type your data is (strings or integers?). –  btel Sep 16 '13 at 12:41
@btel I just didn't mention 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
Ok, but still the parentheses "(..)" are missing - so your syntax is wrong. –  btel Sep 16 '13 at 12:52
The conditional entropy also needs the two arrays to be of equal lenght. In fact you can calculate it from joint entropy and individual entropies -> H(X|Y) = H(X,Y) - H(Y). Perhaps if you give more details, it will be easier to help. –  btel Sep 16 '13 at 13:27

1 Answer 1

Assuming you are talking about the Joint Shannon Entropy, the formula straightforward:

enter image description here

The problem with this, when I look at what you've done so far, is that you lack P(x,y), i.e. the joint probability of the two variables occurring together. It looks like a,b are the individual probabilities for events a and b respectively.

You have other problems with your posted code (mentioned in the comments):

  1. Your variables are not a numeric data type a=["1","2"] is not the same as a=[1,2]. One is a string, the other is a number.
  2. The length of your input data must be the same, i.e. for every x in A, there must be a y in B AND you need to you know the joint probability P(x,y).
share|improve this answer
Yes. 1. It doesn't matter. 2. That's the point. Main problem of calculating joint entropy is to make a and b to be the same length without getting incorrect results. I guess it could be done via transfering data from arrays to matrixes. –  aromatvanili Sep 16 '13 at 14:30
@aromatvanili My point is that the joint probability is a new piece of information, one that did not look like it was present in your question. –  Hooked Sep 16 '13 at 14:59

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