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An Improved Random Forest Classifier for Text Categorization
Journal Title Journal of Computers
Journal Abbreviation jcp
Publisher Group Academy Publisher
Website http://ojs.academypublisher.com
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Title An Improved Random Forest Classifier for Text Categorization
Authors Ye, Yunming; Xu, Baoxun; Guo, Xiufeng; Cheng, Jiefeng
Abstract This paper proposes an improved random forest algorithm for classifying text data. This algorithm is particularly designed for analyzing very high dimensional data with multiple classes whose well-known representative data is text corpus. A novel feature weighting method and tree selection method are developed and synergistically served for making random forest framework well suited to categorize text documents with dozens of topics. With the new feature weighting method for subspace sampling and tree selection method, we can effectively reduce subspace size and improve classification performance without increasing error bound. We apply the proposed method on six text data sets with diverse characteristics. The results have demonstrated that this improved random forests outperformed the popular text classification methods in terms of classification performance.
Publisher ACADEMY PUBLISHER
Date 2012-12-01
Source Journal of Computers Vol 7, No 12 (2012): Special Issue: Advances in Computers and Electronics Engineering
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