Extremely randomized trees

Volume: 63, Issue: 1, Pages: 3 - 42
Published: Mar 2, 2006
Abstract
This paper proposes a new tree-based ensemble method for supervised classification and regression problems. It essentially consists of randomizing strongly both attribute and cut-point choice while splitting a tree node. In the extreme case, it builds totally randomized trees whose structures are independent of the output values of the learning sample. The strength of the randomization can be tuned to problem specifics by the appropriate choice...
Paper Details
Title
Extremely randomized trees
Published Date
Mar 2, 2006
Volume
63
Issue
1
Pages
3 - 42
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