I am using sci-kit learn (version 0.11 with Python version 2.7.3) to select the top K features from a binary classification dataset in svmlight format.
I am trying to identify the feature-id values of the selected features. I assumed this would be quite simple - and may well be! (By feature-id, I mean the number before the feature value as described here)
The following code illustrates exactly how I have been trying to do this:
from sklearn.datasets import load_svmlight_file from sklearn.feature_selection import SelectKBest svmlight_format_train_file = 'contrived_svmlight_train_file.txt' #I present the contents of this file below X_train_data, Y_train_data = load_svmlight_file(svmlight_format_train_file) featureSelector = SelectKBest(score_func=chi2,k=2) featureSelector.fit(X_train_data,Y_train_data) assumed_to_be_the_feature_ids_of_the_top_k_features = list(featureSelector.get_support(indices=True)) #indices=False just gives me a list of True,False etc... print assumed_to_be_the_feature_ids_of_the_top_k_features #this gives: [0, 2]
assumed_to_be_the_feature_ids_of_the_top_k_features cannot correspond to the feature-id values - since (see below) the feature-id values in my input file start from 1.
Now, I suspect that
assumed_to_be_the_feature_ids_of_the_top_k_features may, in fact, correspond to the list indices of the feature-id values sorted in order of increasing value. In my case, index 0 would correspond to
feature-id=1 etc. - such that the code is telling me that
feature-id=3 were selected.
I'd be grateful if someone could either confirm or deny this, however.
Thanks in advance.
Contents of contrived_svmlight_train_file.txt:
1 1:1.000000 2:1.000000 4:1.000000 6:1.000000#mA 1 1:1.000000 2:1.000000#mB 0 5:1.000000#mC 1 1:1.000000 2:1.000000#mD 0 3:1.000000 4:1.000000#mE 0 3:1.000000#mF 0 2:1.000000 4:1.000000 5:1.000000 6:1.000000#mG 0 2:1.000000#mH
P.S. Apologies for not formatting correctly (first time here); I hope this is legible and comprehensible!