Jan. 1, 2024, midnight | Eliza O'Reilly, Ngoc Mai Tran

JMLR www.jmlr.org

Random forests are a popular class of algorithms used for regression and classification. The algorithm introduced by Breiman in 2001 and many of its variants are ensembles of randomized decision trees built from axis-aligned partitions of the feature space. One such variant, called Mondrian forests, was proposed to handle the online setting and is the first class of random forests for which minimax optimal rates were obtained in arbitrary dimension. However, the restriction to axis-aligned splits fails to capture dependencies …

algorithm algorithms class classification decision decision trees feature forests minimax popular random random forests regression space the algorithm trees variants

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