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pythonmachine-learningclassificationscikit-learn

How to get most informative features for scikit-learn classifiers?


The classifiers in machine learning packages like liblinear and nltk offer a method show_most_informative_features(), which is really helpful for debugging features:

viagra = None          ok : spam     =      4.5 : 1.0
hello = True           ok : spam     =      4.5 : 1.0
hello = None           spam : ok     =      3.3 : 1.0
viagra = True          spam : ok     =      3.3 : 1.0
casino = True          spam : ok     =      2.0 : 1.0
casino = None          ok : spam     =      1.5 : 1.0

My question is if something similar is implemented for the classifiers in scikit-learn. I searched the documentation, but couldn't find anything the like.

If there is no such function yet, does somebody know a workaround how to get to those values?


Solution

  • With the help of larsmans code I came up with this code for the binary case:

    def show_most_informative_features(vectorizer, clf, n=20):
        feature_names = vectorizer.get_feature_names()
        coefs_with_fns = sorted(zip(clf.coef_[0], feature_names))
        top = zip(coefs_with_fns[:n], coefs_with_fns[:-(n + 1):-1])
        for (coef_1, fn_1), (coef_2, fn_2) in top:
            print "\t%.4f\t%-15s\t\t%.4f\t%-15s" % (coef_1, fn_1, coef_2, fn_2)