I have run the InfoGain+Ranker algorithms in the Feature selection tab of the Weka in order to determine the significance of each individual variable that contributed to classification results. This is a sample of the corresponding output:
0.1024 1 [lc_1]
0.0708 20 [lc_20]
0.0521 33 [lc_33]
0.0426 11 [lc_11]
After a bit of research regarding the InfoGain Attribute Evaluator, I still am not clear on how to interpret the information.
I am assuming (so please correct me if I am wrong) that the first column (with the decimal numbers) is the result of this equation:
InfoGain(Class,Attribute) = H(Class) - H(Class | Attribute)
which would therefore correspond with the "significance" of each variable...
However, when I add these numbers up, they do not result in 1, thus, I am not quite sure how to interpret what is the exact significance.
Can someone please provide some insight on the proper way to evaluate the InfoGain score? Thank you all, in advance, for any assistance.
Cheers. and thanks in advance for any help!