Query Expansion based on Concept Clique for Markov Network Information Retrieval Model

Lixin Gan, Shengqian Wang, Mingwen Wang, Zhihua Xie, Lin Zhang, Zhenghua Shu
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引用次数: 13

Abstract

Query expansion is a common technique used to improve retrieval effectiveness. In this paper, we propose a novel query expansion technique based on concept clique for Markov network information retrieval model. This technique strengthens the simple relationships between terms in the following two ways:(1) terms in a clique express a similar concept and will be added into query expansion, so that it is effective to expanded into some terms with low similar to query terms but highly related to query topic; (2) query term dependencies are used to select concept cliques as candidates. The selection of concept cliques based on a connected graph is effective to avoid topic drift during expanding polysemous query terms. Experiments on several collections show that new approach makes significant improvements and more effective on collections with polysemous terms.
基于概念团的马尔可夫网络信息检索模型查询扩展
查询展开是用于提高检索效率的常用技术。针对马尔可夫网络信息检索模型,提出了一种基于概念团的查询扩展技术。该技术通过以下两种方式加强了术语之间的简单关系:(1)团中的术语表达了相似的概念,并将其添加到查询扩展中,从而可以有效地扩展成与查询术语相似度低但与查询主题相关性高的术语;(2)利用查询词依赖关系选择候选概念团。基于连通图的概念团选择可以有效地避免多义词查询词扩展过程中的主题漂移。在多个集合上的实验表明,新方法在多义集合上取得了显著的改进,并且更加有效。
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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