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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[1],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?

Thanks...

EDIT

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.

share|improve this question
2  
Did you use cross-validation to measure accuracy? Almost all algorithms depend on data and will show different numbers for different subsets of same size. Also, sampling method should be checked to make sure that classes are devided proportionally in train and test data. Sorry, if you checked both points and they are not the source of issue. You may also want to check this article jmlr.csail.mit.edu/proceedings/papers/v4/janecek08a/… – GrayR Sep 17 '12 at 10:48
    
Thanks @GrayR! 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, train my classifier over the sample, and then test it over my whole test dataset. – D T Sep 17 '12 at 11:37
    
How many features do you eliminate? i.e. what is the rate between the numbers of features you have and max_fts? even though you're trying to eliminate the 'noisy' features, you might be eliminating some with actual value. – etov Oct 22 '12 at 9:31

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