Semantic term matching in axiomatic approaches to information retrieval

Hui Fang, ChengXiang Zhai
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引用次数: 138

Abstract

A common limitation of many retrieval models, including the recently proposed axiomatic approaches, is that retrieval scores are solely based on exact (i.e., syntactic) matching of terms in the queries and documents, without allowing distinct but semantically related terms to match each other and contribute to the retrieval score. In this paper, we show that semantic term matching can be naturally incorporated into the axiomatic retrieval model through defining the primitive weighting function based on a semantic similarity function of terms. We define several desirable retrieval constraints for semantic term matching and use such constraints to extend the axiomatic model to directly support semantic term matching based on the mutual information of terms computed on some document set. We show that such extension can be efficiently implemented as query expansion. Experiment results on several representative data sets show that, with mutual information computed over the documents in either the target collection for retrieval or an external collection such as the Web, our semantic expansion consistently and substantially improves retrieval accuracy over the baseline axiomatic retrieval model. As a pseudo feedback method, our method also outperforms a state-of-the-art language modeling feedback method.
公理化信息检索方法中的语义项匹配
许多检索模型(包括最近提出的公理方法)的一个共同限制是,检索分数仅仅基于查询和文档中术语的精确(即语法)匹配,不允许不同但语义相关的术语相互匹配并对检索分数做出贡献。在本文中,我们通过定义基于词的语义相似度函数的原语权重函数,证明语义词匹配可以自然地融入公理检索模型。我们定义了几个语义词匹配所需的检索约束,并利用这些约束对公理模型进行了扩展,使其能够直接支持基于在某个文档集上计算的词的互信息的语义词匹配。我们证明了这种扩展可以有效地实现为查询扩展。在几个代表性数据集上的实验结果表明,在检索的目标集合或外部集合(如Web)中的文档上计算互信息,我们的语义扩展一致并大大提高了基线公理检索模型的检索精度。作为一种伪反馈方法,我们的方法也优于最先进的语言建模反馈方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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