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I want to find out the error rate using svm classifier in python, the approach that I am taking to accomplish the same is:

  1-svm.predict(test_samples).mean()

However, this approach does not work. Also the score function of sklearn gives mean accuracy...however, I can not use it as I want to accomplish cross-validation, and then find the error-rate. Please suggest a suitable function in sklearn to find out the error rate.

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2  
Doesn't svm.predict give you an output of classifications? Why would taking the mean do anything useful? – dfb Apr 25 '12 at 15:42
up vote 3 down vote accepted

Assuming you have the true labels in a vector y_test:

from sklearn.metrics import zero_one_score

y_pred = svm.predict(test_samples)
accuracy = zero_one_score(y_test, y_pred)
error_rate = 1 - accuracy
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If you want to cross validate a score, use the sklearn.cross_validation.cross_val_score utility function and pass it the scoring function you like from the sklearn.metrics module:

http://scikit-learn.org/dev/modules/cross_validation.html

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Use sklearn.metrics.accuracy_score Doc here.

from sklearn.metrics import accuracy_score
#create vectors for actual labels and predicted labels...
my_accuracy = accuracy_score(actual_labels, predicted_labels, normalize=False) / float(actual_labels.size)
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1  
this is the classification error, how much it classifies correctly. – Jolly Ginger Giant May 14 '15 at 19:18

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