We describe in detail an implementation, called BoosTexter, of the new boosting algorithms for text categorization tasks. We present results comparing the. BoosTexter is a general purpose machine-learning program based on boosting for building a BoosTexter: A boosting-based system for text categorization. BoosTexter: A Boosting-based Systemfor Text Categorization . In Advances in Neural Information Processing Systems 8 (pp. ). 8.
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Categorization Search for additional papers on this topic. An evaluation of statistical approaches to text categorization.
BoosTexter: A Boosting-based System for Text Categorization
We describe in detail an implementation, called BoosTexter, of the new boosting algorithms for text categorization tasks. The following articles are merged in Scholar. Advances in Neural Information Processing Systems, Citation Statistics 2, Citations 0 ’99 ’03 ’08 ’13 ‘ We present results comparing the performance of BoosTexter and a number of other categorizattion algorithms on a variety of tasks.
The strength of weak learnability RE Schapire Machine learning 5 2, New citations to this author. New articles by this author.
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Journal of machine learning research 1 Dec, New articles related to this author’s research. Categorization Boosting machine learning.
Topics Discussed in This Paper. An evaluation of statistical approaches. Advances in neural information processing systems, Proceedings of the 19th international conference on World wide web, Get my own profile Cited by View all All Since Citations h-index 75 54 iindex Email address for updates.
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The boosting approach to machine learning: Arcing Classifiers Leo Breiman Articles 1—20 Show more. Ecography 29 2, Journal of machine learning research 4 Nov, Their combined citations are counted only for the first article.
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Automaticacquisition of salient grammar boostetxer for call – type classification. See our FAQ for additional information. A decision-theoretic generalization of on-line learning and an application to boosting Y Freund, RE Schapire Journal of computer and system sciences 55 1, Citations Publications citing this paper. This paper has 2, citations.
Our approach is based on a new and improved family of boosting algorithms.