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How can i know sample's probability that it belongs to a class predicted by predict() function of Scikit-Learn in Support Vector Machine?

>>>print clf.predict([fv])

There is any function?

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up vote 7 down vote accepted

Use clf.predict_proba([fv]) to obtain a list with predicted probabilities per class. However, this function is not available for all classifiers.

Regarding your comment, consider the following:

>> prob = [ 0.01357713, 0.00662571, 0.00782155, 0.3841413, 0.07487401, 0.09861277, 0.00644468, 0.40790285]
>> sum(prob)

The probabilities sum to 1.0, so multiply by 100 to get percentage.

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When creating SVC class to compute the probability estimates by setting probability=True:

Then call fit as usual and then predict_proba([fv]).

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It returns: predicted values array "[[ 0.01357713 0.00662571 0.00782155 0.3841413 0.07487401 0.09861277 0.00644468 0.40790285]]" not a probability, like: class 8: 80%,class 4: 40% – postgres Feb 22 '13 at 12:00
Well this is exactly what you are looking for: 40% for class 7 (assuming the first class is "class 0"), 38% for class 3, 10% for class 5 and 7% for class 4. – ogrisel Feb 24 '13 at 14:59

Definitely read this section of the docs as there's some subtleties involved. See also Scikit-learn predict_proba gives wrong answers

Basically, if you have a multi-class problem with plenty of data predict_proba as suggested earlier works well. Otherwise, you may have to make do with an ordering that doesn't yield probability scores from decision_function.

Here's a nice motif for using predict_proba to get a dictionary or list of class vs probability:

model = svm.SVC(probability=True), Y)
results = model.predict_proba(test_data)[0]

# gets a dictionary of {'class_name': probability}
prob_per_class_dictionary = dict(zip(model.classes_, results))

# gets a list of ['most_probable_class', 'second_most_probable_class', ..., 'least_class']
results_ordered_by_probability = map(lambda x: x[0], sorted(zip(model.classes_, results), key=lambda x: x[1], reverse=True))
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