RotBoost: A technique for combining Rotation Forest and AdaBoost

Volume: 29, Issue: 10, Pages: 1524 - 1536
Published: Jul 1, 2008
Abstract
This paper presents a novel ensemble classifier generation technique RotBoost, which is constructed by combining Rotation Forest and AdaBoost. The experiments conducted with 36 real-world data sets available from the UCI repository, among which a classification tree is adopted as the base learning algorithm, demonstrate that RotBoost can generate ensemble classifiers with significantly lower prediction error than either Rotation Forest or...
Paper Details
Title
RotBoost: A technique for combining Rotation Forest and AdaBoost
Published Date
Jul 1, 2008
Volume
29
Issue
10
Pages
1524 - 1536
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