Jan. 1, 2022, midnight | Tim Coleman, Wei Peng, Lucas Mentch

JMLR www.jmlr.org

Throughout the last decade, random forests have established themselves as among the most accurate and popular supervised learning methods. While their black-box nature has made their mathematical analysis difficult, recent work has established important statistical properties like consistency and asymptotic normality by considering subsampling in lieu of bootstrapping. Though such results open the door to traditional inference procedures, all formal methods suggested thus far place severe restrictions on the testing framework and their computational overhead often precludes their practical scientific …

hypothesis random random forests scalable testing

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