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LSM: Language Sense Model for Information Retrieval

机译:LSM:信息检索的语言读取模型

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摘要

A lot of work has been done on drawing word senses into retrieval to deal with the word sense ambiguity problem, but most of them achieved negative results. In this paper, we first implement a WSD system for nouns and verbs, then the language sense model (LSM) for information retrieval is proposed. The LSM combines the terms and senses of a document seamlessly through an EM algorithm. Retrieval on TREC collections shows that the LSM outperforms both the vector space model (BM25) and the traditional language model significantly for both medium and long queries (7.53%-16.90%). Based on the experiments, we can also empirically draw the conclusion that the fine-grained senses will improve the retrieval performance when they are properly used.
机译:在绘图字的情况下已经完成了许多工作进入检索来处理词语含糊不清问题,但大多数人都取得了负面结果。在本文中,我们首先为名词和动词实现WSD系统,然后提出了用于信息检索的语言感测模型(LSM)。 LSM通过EM算法无缝地结合了文档的术语和感官。 TREC集合上的检索显示LSM对于中长期和长期查询(7.53%-16.90%)显着优于传统的矢量空间模型(BM25)和传统语言模型。基于实验,我们还可以凭经验得出结论,即细粒度感官将在适当使用时提高检索性能。

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