# Entropy and Information Gain

Simple question I hope.

If I have a set of data like this:

Classification  attribute-1  attribute-2

Correct         dog          dog
Correct         dog          dog
Wrong           dog          cat
Correct         cat          cat
Wrong           cat          dog
Wrong           cat          dog

Then what is the information gain of attribute-2 relative to attribute-1?

I've computed the entropy of the whole data set: -(3/6)log2(3/6)-(3/6)log2(3/6)=1

Then I'm stuck! I think you need to calculate entropies of attribute-1 and attribute-2 too? Then use these three calculations in an information gain calculation?

Any help would be great,

Thank you :).

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Well first you have to calculate the entropy for each of the attributes. After that you calculate the information gain. Just give me a moment and I'll show how it should be done.

for attribute-1

attr-1=dog:
info([2c,1w])=entropy(2/3,1/3)

attr-1=cat
info([1c,2w])=entropy(1/3,2/3)

Value for attribute-1:

info([2c,1w],[1c,2w])=(3/6)*info([2c,1w])+(3/6)*info([1c,2w])

Gain for attribute-1:

gain("attr-1")=info[3c,3w]-info([2c,1w],[1c,2w])

And you have to do the same for the next attribute.

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