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Adaptive Base Class Boost for Multi-class Classification

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 Added by Ping Li
 Publication date 2008
and research's language is English
 Authors Ping Li




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We develop the concept of ABC-Boost (Adaptive Base Class Boost) for multi-class classification and present ABC-MART, a concrete implementation of ABC-Boost. The original MART (Multiple Additive Regression Trees) algorithm has been very successful in large-scale applications. For binary classification, ABC-MART recovers MART. For multi-class classification, ABC-MART considerably improves MART, as evaluated on several public data sets.



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170 - Yuzhou Cao , Lei Feng , Senlin Shu 2021
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