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?

  • You mean the most discriminating parameter? Commented Jun 20, 2012 at 9:44
  • i'm not sure what you mean with parameters. i mean the most discriminating features, like in a bag-of-words model for spam classification, which words give the most evidence for each class. not the parameters which i understand as "settings" for the classifier - like learning rate etc.
    – tobigue
    Commented Jun 20, 2012 at 9:55
  • 11
    @eowl: in machine learning parlance, parameters are the settings generated by the learning procedure based on the features of your training set. Learning rate etc. are hyperparameters.
    – Fred Foo
    Commented Jun 20, 2012 at 14:44

8 Answers 8


The classifiers themselves do not record feature names, they just see numeric arrays. However, if you extracted your features using a Vectorizer/CountVectorizer/TfidfVectorizer/DictVectorizer, and you are using a linear model (e.g. LinearSVC or Naive Bayes) then you can apply the same trick that the document classification example uses. Example (untested, may contain a bug or two):

def print_top10(vectorizer, clf, class_labels):
    """Prints features with the highest coefficient values, per class"""
    feature_names = vectorizer.get_feature_names()
    for i, class_label in enumerate(class_labels):
        top10 = np.argsort(clf.coef_[i])[-10:]
        print("%s: %s" % (class_label,
              " ".join(feature_names[j] for j in top10)))

This is for multiclass classification; for the binary case, I think you should use clf.coef_[0] only. You may have to sort the class_labels.

  • yeah in my cases i have only two classes, but with your code i was able to come up with the thing i wanted. thanks alot!
    – tobigue
    Commented Jun 20, 2012 at 19:35
  • 1
    For 2 classes, it looks like it is coef_ rather than coef_[0]. Commented Sep 12, 2013 at 1:24
  • 2
    @RyanRosario: correct. In the binary case, coef_ is flattened to save space.
    – Fred Foo
    Commented Sep 12, 2013 at 7:50
  • 4
    how are class_labels determined? I want to know the order of class labels. Commented Feb 19, 2014 at 4:55
  • 2
    You can get ordered classes from the classifier with class_labels=clf.classes_
    – wassname
    Commented Sep 12, 2015 at 9:09

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)
  • How do you call the function from main method ? what does f1 and f2 stand for? I am trying to call the function from Decision tree classifier with scikit-learn.
    – user2326956
    Commented Mar 30, 2014 at 20:37
  • 1
    This code will only work with a linear classifier that has a coef_ array, so unfortunately I don't think it is possible to use it with sklearn's decision tree classifiers. fn_1 and fn_2 stand for the feature names.
    – tobigue
    Commented Mar 31, 2014 at 6:54

To add an update, RandomForestClassifier now supports the .feature_importances_ attribute. This attribute tells you how much of the observed variance is explained by that feature. Obviously, the sum of all these values must be <= 1.

I find this attribute very useful when performing feature engineering.

Thanks to the scikit-learn team and contributors for implementing this!

edit: This works for both RandomForest and GradientBoosting. So RandomForestClassifier, RandomForestRegressor, GradientBoostingClassifier and GradientBoostingRegressor all support this.


I actually had to find out Feature Importance on my NaiveBayes classifier and although I used the above functions, I was not able to get feature importance based on classes. I went through the scikit-learn's documentation and tweaked the above functions a bit to find it working for my problem. Hope it helps you too!

def important_features(vectorizer,classifier,n=20):
    class_labels = classifier.classes_
    feature_names =vectorizer.get_feature_names()

    topn_class1 = sorted(zip(classifier.feature_count_[0], feature_names),reverse=True)[:n]
    topn_class2 = sorted(zip(classifier.feature_count_[1], feature_names),reverse=True)[:n]

    print("Important words in negative reviews")

    for coef, feat in topn_class1:
        print(class_labels[0], coef, feat)

    print("Important words in positive reviews")

    for coef, feat in topn_class2:
        print(class_labels[1], coef, feat)

Note that your classifier(in my case it's NaiveBayes) must have attribute feature_count_ for this to work.


You can also do something like this to create a graph of importance features by order:

importances = clf.feature_importances_
std = np.std([tree.feature_importances_ for tree in clf.estimators_],
indices = np.argsort(importances)[::-1]

# Print the feature ranking
#print("Feature ranking:")

# Plot the feature importances of the forest
plt.title("Feature importances")
plt.bar(range(train[features].shape[1]), importances[indices],
   color="r", yerr=std[indices], align="center")
plt.xticks(range(train[features].shape[1]), indices)
plt.xlim([-1, train[features].shape[1]])

RandomForestClassifier does not yet have a coef_ attrubute, but it will in the 0.17 release, I think. However, see the RandomForestClassifierWithCoef class in Recursive feature elimination on Random Forest using scikit-learn. This may give you some ideas to work around the limitation above.


Not exactly what you are looking for, but a quick way to get the largest magnitude coefficients (assuming a pandas dataframe columns are your feature names):

You trained the model like:

lr = LinearRegression()
X_train, X_test, y_train, y_test = train_test_split(df, Y, test_size=0.25)
lr.fit(X_train, y_train)

Get the 10 largest negative coefficient values (or change to reverse=True for largest positive) like:

sorted(list(zip(feature_df.columns, lr.coef_)), key=lambda x: x[1], 

First make a list, I give this list the name label. After that extracting all features name and column name I add in label list. Here I use naive bayes model. In naive bayes model, feature_log_prob_ give probability of features.

def top20(model,label):


  for i in range(len(feature_prob)):

    print ('top 20 features for {} class'.format(i))

    clas = feature_prob[i,:]


    for count,ele in enumerate(clas,0): 


    dictonary=dict(sorted(dictonary.items(), key=lambda x: x[1], reverse=True)[:20])


    for i in keys:



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