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Research on Keyword Extraction Algorithm Using PMI and TextRank

机译:基于PMI和TextRank的关键词提取算法研究

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Keyword extraction is a basic text retrieval technique in natural language processing, which can highly summarize text content and reflect the author's writing purposes. It plays an important role in document retrieval, text classification and data mining. In this paper, we propose a TextRank algorithm based on PMI (pointwise mutual information) weighting for extracting keywords from documents. The initial transition probability of the candidate words is constructed by calculating the PMI between vocabularies, which is used for iterative calculation of the vocabulary graph model within TextRank and keyword extraction. Taking into account the mutual information between the vocabulary in the document set, the word relationship in the single document is corrected, which is helpful to improve the accuracy of document keyword extraction. Experiments show that our method achieves better performance in extracting keywords in large-scale text data.
机译:关键字提取是自然语言处理中的一种基本文本检索技术,可以高度概括文本内容并反映作者的写作目的。它在文档检索,文本分类和数据挖掘中起着重要作用。在本文中,我们提出了一种基于PMI(逐点互信息)加权的TextRank算法,用于从文档中提取关键字。候选单词的初始过渡概率是通过计算词汇之间的PMI来构造的,用于在TextRank和关键字提取中迭代计算词汇图模型。考虑到文档集中词汇之间的相互信息,可以纠正单个文档中的单词关系,这有助于提高文档关键词提取的准确性。实验表明,该方法在提取大规模文本数据中的关键词方面具有较好的性能。

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