基于信息熵和TextRank的跨语言文本关键字提取研究

Xiaoyu Zhang, Yongbin Wang, Lin Wu
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引用次数: 5

摘要

为了尽可能准确地从跨语言文档中提取关键字,特别是对于关键字提取技术尚不成熟的语言,提出了一种基于信息熵和TextRank的文本关键字提取方法,从翻译的中文文档中提取准确的关键字。该方法根据词的信息熵确定词的基本重要度,然后利用词的信息熵通过TextRank算法进行迭代投票。该方法解决了TextRank算法容易将频繁出现的非关键字提取为关键字的问题。实验结果表明,在跨语言双语翻译文档的处理中,该方法可以比TextRank更准确地提取关键字。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Cross Language Text Keyword Extraction Based on Information Entropy and TextRank
In order to extract keywords from cross-language documents as accurately as possible, especially for the language whose keyword extraction technology is not mature, a text keyword extraction method based on information entropy and TextRank is proposed to extract the accurate keywords from the translated Chinese documents. This method determines the basic importance of words according to the information entropy of words, and then uses the information entropy of words to vote iteratively through the TextRank algorithm. This method solves the problem that TextRank algorithm easily extracts frequent non key words as keywords. The experimental results show that the proposed method can extract keywords more accurately than TextRank in the processing of cross-lingual bilingual translated documents.
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