Tibetan Text Classification Based on the Feature of Position Weight

Hui Cao, Huiqiang Jia
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引用次数: 12

Abstract

Based on the study of Tibetan characters and grammar, this paper has done research on Tibetan in the text categorization weight algorithm based on the vector space model. Comprehensively considering the position information of Tibetan which presented in the text, the paper has proposed an improved TF-IDF weighting algorithm. In the process, it has adopted χ2 (CHI) statistical methods for features on the Tibetan word document extraction and used the cosine method in Tibetan text similarity calculation to distinguish between similar documents in Tibetan. The Tibetan text classification algorithm with linear separable support vector machine classification of Tibetan texts, and finally compared the TF-IDF algorithm with the improved TF-IDF algorithm in the effects of the Tibetan text classification. Finally, it shows that the improved TF-IDF algorithm has better classification effect.
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基于位置权重特征的藏文文本分类
本文在研究藏文文字和语法的基础上,研究了基于向量空间模型的藏文文本分类权重算法。综合考虑文中藏文的位置信息,提出了一种改进的TF-IDF加权算法。在藏文词文档提取过程中,采用χ2 (CHI)统计方法对特征进行提取,在藏文文本相似度计算中采用余弦方法对藏文相似文档进行区分。将藏文分类算法与线性可分支持向量机对藏文进行分类,最后比较TF-IDF算法与改进TF-IDF算法在藏文分类上的效果。最后表明改进的TF-IDF算法具有更好的分类效果。
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