How to get a classifier's confidence score for a prediction in sklearn?

Question:

I would like to get a confidence score of each of the predictions that it makes, showing on how sure the classifier is on its prediction that it is correct.

I want something like this:

How sure is the classifier on its prediction?

Class 1: 81% that this is class 1
Class 2: 10%
Class 3: 6%
Class 4: 3%

Samples of my code:

features_train, features_test, labels_train, labels_test = cross_validation.train_test_split(main, target, test_size = 0.4)

# Determine amount of time to train
t0 = time()
model = SVC()
#model = SVC(kernel='poly')
#model = GaussianNB()

model.fit(features_train, labels_train)

print 'training time: ', round(time()-t0, 3), 's'

# Determine amount of time to predict
t1 = time()
pred = model.predict(features_test)

print 'predicting time: ', round(time()-t1, 3), 's'

accuracy = accuracy_score(labels_test, pred)

print 'Confusion Matrix: '
print confusion_matrix(labels_test, pred)

# Accuracy in the 0.9333, 9.6667, 1.0 range
print accuracy



model.predict(sub_main)

# Determine amount of time to predict
t1 = time()
pred = model.predict(sub_main)

print 'predicting time: ', round(time()-t1, 3), 's'

print ''
print 'Prediction: '
print pred

I suspect that I would use the score() function, but I seem to keep implementing it correctly. I don’t know if that’s the right function or not, but how would one get the confidence percentage of a classifier’s prediction?

Asked By: user3377126

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Answers:

Per the SVC documentation, it looks like you need to change how you construct the SVC:

model = SVC(probability=True)

and then use the predict_proba method:

class_probabilities = model.predict_proba(sub_main)
Answered By: Justin Peel

For those estimators implementing predict_proba() method, like Justin Peel suggested, You can just use predict_proba() to produce probability on your prediction.

For those estimators which do not implement predict_proba() method, you can construct confidence interval by yourself using bootstrap concept (repeatedly calculate your point estimates in many sub-samples).

Let me know if you need any detailed examples to demonstrate either of these two cases.

Answered By: Jianxun Li