文档分类中各种tf-idf词加权策略

Dengya Zhu, Jitian Xiao
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引用次数: 22

摘要

词权策略在文本分类和信息检索等与文本处理相关的领域起着至关重要的作用。在这样的系统中,术语频率、逆文档频率和文档长度规范化是开发术语加权策略时要考虑的重要因素。术语长度规范化是为了给检索长文档和短文档提供相同的机会。但是,非常短的文档中可能对用户无用的术语(特别是在Web信息检索场景中)可能被赋予非常高的权重,从而导致较短的文档比与用户信息需求更相关的较长的文档排名更高。在本研究中,提出了一种新的R-tfidf项加权策略,以减轻文档长度归一化的副作用。实验结果表明,该方法能在一定程度上提高文本分类的性能。
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R-tfidf, a Variety of tf-idf Term Weighting Strategy in Document Categorization
Term weighting strategy plays an essential role in the areas related to text processing such as text categorization and information retrieval. In such systems, term frequency, inverse document frequency, and document length normalization are important factors to be considered when a term weighting strategy is developed. Term length normalization is proposed to give equal opportunities to retrieve both lengthy documents and shorter ones. However, terms in very short documents that may be useless for users, especially in the scenario of Web information retrieval, could be assigned very high weights, resulting in a situation where shorter documents are ranked higher than lengthy documents that are more relevant to users information needs. In this research, a new R-tfidf term weighting strategy is proposed to alleviate the side effects of document length normalization. Experimental results demonstrate the proposed approach can to some extent improve the performance of text categorization.
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