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in RandomForestClassifier the default value for max_features is sqrt(n_features) and in RandomForestRegressor it is n_features, any specific reason for that?


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up vote 5 down vote accepted

This is an heuristic based on empirical results. On average, it seems to be a better choice, as a default setting, to set max_features=sqrt(n_features) for classification and max_features=n_features for regression.

This heuristic stems from this paper :

In any case, it is of course always a better idea to cross-validate this parameter.

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Thanks for the reference! If I am using the random forest with max_features=n_features and bootstrap=False, would it be correct to say that essentially it behaves like a single decision tree (only with a lot of computation overhead) –  d1337 Aug 29 '13 at 13:34
Yes, in that case all trees are the same (modulo some ties that may happen when looking for the best splits). –  Gilles Louppe Aug 29 '13 at 15:30
If max_features=n_features, then the random subspace method isn't even used? –  britney Aug 23 '14 at 17:09

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