What exactly does the LogisticRegression.predict_proba function return?

In my example I get a result like this:

    [4.65761066e-03, 9.95342389e-01],
    [9.75851270e-01, 2.41487300e-02],
    [9.99983374e-01, 1.66258341e-05]

From other calculations, using the sigmoid function, I know, that the second column is the probabilities. The documentation says that the first column is n_samples, but that can't be, because my samples are reviews, which are texts and not numbers. The documentation also says that the second column is n_classes. That certainly can't be, since I only have two classes (namely, +1 and -1) and the function is supposed to be about calculating probabilities of samples really being of a class, but not the classes themselves.

What is the first column really and why it is there?

2 Answers 2

4.65761066e-03 + 9.95342389e-01 = 1
9.75851270e-01 + 2.41487300e-02 = 1
9.99983374e-01 + 1.66258341e-05 = 1

The first column is the probability that the entry has the -1 label and the second column is the probability that the entry has the +1 label. Note that classes are ordered as they are in self.classes_.

If you would like to get the predicted probabilities for the positive label only, you can use logistic_model.predict_proba(data)[:,1]. This will yield you the [9.95342389e-01, 2.41487300e-02, 1.66258341e-05] result.


As iulian explained, each row of predict_proba()'s result is the probabilities that the observation in that row is of each class (and the classes are ordered as they are in lr.classes_).

In fact, it's also intimately tied to predict() in that each row's highest probability class is chosen by predict(). So for any LogisticRegression (or any classifier really), the following is True.

lr = LogisticRegression().fit(X, y)
highest_probability_classes = lr.predict_proba(X).argmax(axis=1)
all(lr.predict(X) == lr.classes_[highest_probability_classes])     # True

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