基于无关反馈分析的查询推荐

Bo Zhang, Bin Zhang, Shubo Zhang, Chao Ma
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引用次数: 3

摘要

查询间相似度计算是基于搜索日志中点击信息进行查询推荐的核心步骤。在这一步中,对相似度计算结果影响较大的被点击url或被点击文档词的权重,主要是基于共现来计算。然而,基于共现的权重计算通常会受到搜索日志中不相关反馈的干扰,从而降低查询相似度计算的精度。本文提出了一种基于“查询-点击序列”模型的查询间相似度计算方法,该方法通过在点击序列中包含该词的文档的密度来计算被点击的文档词的权重,并在相似度计算中过滤不相关文档的内容。一系列实验结果表明,该方法能够准确地计算出词的权重,提高了查询相似度计算的精度,从而提高了查询推荐的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Query recommendation based on irrelevant feedback analysis
Similarity computation among queries is a central step of query recommendation based on click information in search log. In this step, weights of clicked URLs or clicked document terms, which may have a large influence on similarity computation results, are mostly counted based on co-occurrence. However, counting weights based on co-occurrence are unusually disturbed by irrelevant feedbacks in search log, which may decrease the precision of query similarity computation. This paper proposes a method that computes similarity among queries based on "Query - Clicked Sequence" model, which counts weight of clicked document term by density of documents containing this term on clicked sequence, and filters content of irrelevant documents during similarity computation. A series of experiment results show that this method can precisely count the weights of terms, and increase the precision of query similarity computation, accordingly increase the precision of query recommendation.
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