Consistency of random forests
Erwan Scornet (LSTA), G\'erard Biau (LSTA, LPMA), Jean-Philippe Vert, (CBIO)

TL;DR
This paper proves the consistency of Breiman's random forest algorithm in additive regression models, providing theoretical insights into its ability to adapt to sparsity and explaining its strong practical performance.
Contribution
It offers the first rigorous proof of the consistency of random forests in the context of additive models, advancing the theoretical understanding of their properties.
Findings
Random forests are consistent in additive regression models.
The analysis reveals how random forests adapt to sparsity.
Theoretical results align with practical effectiveness.
Abstract
Random forests are a learning algorithm proposed by Breiman [Mach. Learn. 45 (2001) 5--32] that combines several randomized decision trees and aggregates their predictions by averaging. Despite its wide usage and outstanding practical performance, little is known about the mathematical properties of the procedure. This disparity between theory and practice originates in the difficulty to simultaneously analyze both the randomization process and the highly data-dependent tree structure. In the present paper, we take a step forward in forest exploration by proving a consistency result for Breiman's [Mach. Learn. 45 (2001) 5--32] original algorithm in the context of additive regression models. Our analysis also sheds an interesting light on how random forests can nicely adapt to sparsity. 1. Introduction. Random forests are an ensemble learning method for classification and regression that…
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