I am dealing with a text classification problem using machine learning. I have implemented a well known feature selection method, Information Gain, in order to select the top k features. I was expecting that doing feature selection with Information Gain would help me to reduce the noise (due to of irrelevant features) from influencing the classifier. However, what in the end I get is a reduction in accuracy of around 4%.
My code for the Information Gain scoring method is as follows (I am using the NLTK library). I am dealing with three classes, "-1","1" and "0".
def IG(max_fts, class_freq, word_freq, class_word_freq): word_infogain =  problabels = [class_freq.freq("1"), class_freq.freq("-1"), class_freq.freq("0")] #probs of the classes entropybefore = -sum([p * math.log(p,2) for p in problabels]) #entropy before splitting for w in word_freq.samples(): #compute for each word samples1with = class_word_freq["1"][w] #num of instances in class 1 with w samples2with = class_word_freq["0"][w] samples3with = class_word_freq["-1"][w] samples1without = class_freq["1"] - samples1with #num of instances in class 1 without w samples2without = class_freq["0"] - samples2with samples3without = class_freq["-1"] - samples3with sampleswith = samples1with + samples2with + samples3with #total num samples with w sampleswithout = samples1without + samples2without + samples3without #total num samples without w #with case pwith = sampleswith / class_freq.N() probswith = [samples1with/sampleswith, samples2with/sampleswith, samples3with/sampleswith] entropy_with = -sum([p * math.log(p,2) for p in probswith if p!=0]) #class entropy of instances with w #without case pwithout = sampleswithout / class_freq.N() probswithout = [samples1without/sampleswithout,samples2without/sampleswithout, samples3without/sampleswithout ) #class entropy of instances without w entropy_without = -sum([p * math.log(p,2) for p in probswithout if p!=0]) #information gain entropyafter = pwith*entropy_with + pwithout*entropy_without #entropy after splitting by the word infogain = entropybefore-entropyafter #infogain score word_infogain.append((w,infogain)) word_infogain.sort(key=lambda x: x,reverse=True) #order by descending infogain score return [w for (w,score) in word_infogain[:max_fts]] #return top max_fts features
Is there anything wrong with my code?
The data I use for training has been noisily labeled(i.e. automatically labeled using heuristics), and balanced for the 3 classes. My test data is in a different dataset, manually labeled and balanced. My validation method is bootstrapping: I iteratively sample (with replacement) over the whole training dataset (the resulting sample is also balanced), train my classifier over the sample, and then test it over my separate test dataset.