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I am interested in understanding how probability estimates are calculated by random forests, both in general and specifically in Python's scikit-learn library (where probability estimated are returned by the predict_proba function).

Thanks, Guy

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I think you're going to have to be more specific than that, particularly, what is your question? –  DuckMaestro Jan 7 '13 at 8:51

2 Answers 2

up vote 10 down vote accepted

The probabilities returned by a forest are the mean probabilities returned by the trees in the ensemble (docs). The probabilities returned by a single tree are the normalized class histograms of the leaf a sample lands in.

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Do you happen to know where in the docs can I find more info about how probabilities are estimated by a single tree? –  dukebody Jan 17 at 16:02
I don't see it currently, we'll add it. You can find it in the literature. It is just the fraction of the samples in the same leaf belonging to a certain class (as I said in other words in my answer above) –  Andreas Mueller Feb 6 at 9:13
Thanks Andreas! Regarding the way the probabilities are estimated... any thoughts about stackoverflow.com/questions/28002991/… ? –  dukebody Feb 6 at 9:16

In addition to what Andreas/Dougal said, when you train the RF, turn on compute_importances=True. Then inspect classifier.feature_importances_ to see which features are occurring high-up in the RF's trees.

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Just a quick note: compute_importances has been removed in scikit-learn 0.14+ , feature importances since then are computed upon executing feature_importances_ (c.f., github.com/scikit-learn/scikit-learn/commit/…) –  oliverguenther Mar 13 at 21:46
Thanks @oliverguenther –  smci Mar 14 at 2:49

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