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2009
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Web-scale classification with naive bayes

14 years 5 months ago
Web-scale classification with naive bayes
Traditional Naive Bayes Classifier performs miserably on web-scale taxonomies. In this paper, we investigate the reasons behind such bad performance. We discover that the low performance are not completely caused by the intrinsic limitations of Naive Bayes, but mainly comes from two largely ignored problems: contradiction pair problem and discriminative evidence cancelation problem. We propose modifications that can alleviate the two problems while preserving the advantages of Naive Bayes. The experimental results show our modified Naive Bayes can significantly improve the performance on real web-scale taxonomies. Categories and Subject Descriptors: I.2.6 [Artificial Intelligence]: Learning General Terms: Algorithms, Experimentation
Congle Zhang, Gui-Rong Xue, Yong Yu, Hongyuan Zha
Added 21 Nov 2009
Updated 21 Nov 2009
Type Conference
Year 2009
Where WWW
Authors Congle Zhang, Gui-Rong Xue, Yong Yu, Hongyuan Zha
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