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On the Trade-off between the Number of Nodes and the Number of Trees in a Random Forest

16 December 2023
Tatsuya Akutsu
A. Melkman
Atsuhiro Takasu
ArXiv (abs)PDFHTML
Abstract

In this paper, we focus on the prediction phase of a random forest and study the problem of representing a bag of decision trees using a smaller bag of decision trees, where we only consider binary decision problems on the binary domain and simple decision trees in which an internal node is limited to querying the Boolean value of a single variable. As a main result, we show that the majority function of nnn variables can be represented by a bag of TTT (<n< n<n) decision trees each with polynomial size if n−Tn-Tn−T is a constant, where nnn and TTT must be odd (in order to avoid the tie break). We also show that a bag of nnn decision trees can be represented by a bag of TTT decision trees each with polynomial size if n−Tn-Tn−T is a constant and a small classification error is allowed. A related result on the kkk-out-of-nnn functions is presented too.

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