Feature selection for Chinese Text Categorization based on improved particle swarm optimization

Yaohong Jin, Wen Xiong, Cong Wang
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引用次数: 20

Abstract

Feature selection is an important preprocessing step of Chinese Text Categorization, which reduces the high dimension and keeps the reduced results comprehensible compared to feature extraction. A novel criterion to filter features coarsely is proposed, which integrating the superiorities of term frequency-inverse document frequency as inner-class measure and CHI-square as inter-class, and a new feature selection method for Chinese text categorization based on swarm intelligence is presented, which using improved particle swarm optimization to select features fine on the results of coarse grain filtering, and utilizing support vector machine to evaluate feature subsets and taking the evaluations as the fitness of particles. The experiments on Fudan University Chinese Text Classification Corpus show a higher classification accuracy obtained by using the new criterion for features filtering and an effective feature reduction ratio attained by utilizing the novel FS method for Chinese text categorization.
基于改进粒子群优化的中文文本分类特征选择
特征选择是中文文本分类的重要预处理步骤,与特征提取相比,特征选择降低了文本分类的高维,降低了分类结果的可理解性。结合词频逆作为类内度量和卡方作为类间度量的优点,提出了一种新的特征粗过滤准则,并提出了一种基于群智能的中文文本分类特征选择新方法,该方法利用改进的粒子群算法对粗粒度过滤的结果进行精细特征选择。利用支持向量机对特征子集进行评价,并将评价结果作为粒子的适应度。在复旦大学中文文本分类语料库上的实验表明,采用新的特征过滤准则获得了较高的分类准确率,采用新的FS方法对中文文本进行分类获得了有效的特征约简比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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