查询变化作为会话搜索的相关反馈

Sicong Zhang, Dongyi Guan, G. Yang
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引用次数: 26

摘要

会话搜索是为整个会话执行文档检索的信息检索(Information Retrieval, IR)任务。在会话期间,用户经常更改查询以探索和调查信息需求。在本文中,我们提出使用查询变化作为一种新的相关反馈形式,以更好地进行会话搜索。对TREC 2012 Session Track的评估表明,与现有的相关反馈方法相比,查询变化是一种非常有效的反馈形式。该方法优于当前最先进的TREC 2012会话跟踪相关反馈方法,显著提高了>25%。
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Query change as relevance feedback in session search
Session search is the Information Retrieval (IR) task that performs document retrieval for an entire session. During a session, users often change queries to explore and investigate the information needs. In this paper, we propose to use query change as a new form of relevance feedback for better session search. Evaluation conducted over TREC 2012 Session Track shows that query change is a highly effective form of feedback as compared with existing relevance feedback methods. The proposed method outperforms the state-of-the-art relevance feedback methods for the TREC 2012 Session Track by a significant improvement of >25%.
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