Analysis of combining multiple query representations with varying lengths in a single engine

Abdur Chowdhury, S. Beitzel, Eric C. Jensen
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引用次数: 5

Abstract

We examine the issues of combining multiple query representations in a single IR engine. Differing query representations are used to retrieve different documents. Thus, when combining their results, improvements are observed in effectiveness. We use multiple TREC query representations (title, description and narrative) as a basis for experimentation. We examine several combination approaches presented in the literature (vector addition, CombSUM and CombMNZ) and present a new combination approach using query vector length normalization. We examine two query representation combination approaches (title + description and title + narrative) for 150 queries from TREC 6, 7 and 8 topics. Our QLN (Query Length Normalization) technique outperformed vector addition and data fusion approaches by as much as 32% and was on average 24% better. Additionally, QLN always outperformed the single best query representation in terms of effectiveness.
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在单个引擎中组合具有不同长度的多个查询表示的分析
我们研究了在单个IR引擎中组合多个查询表示的问题。不同的查询表示用于检索不同的文档。因此,当结合他们的结果时,可以观察到有效性的提高。我们使用多个TREC查询表示(标题、描述和叙述)作为实验的基础。我们研究了文献中提出的几种组合方法(向量加法、CombSUM和CombMNZ),并提出了一种使用查询向量长度归一化的新组合方法。我们研究了来自TREC 6,7和8主题的150个查询的两种查询表示组合方法(标题+描述和标题+叙述)。我们的QLN(查询长度归一化)技术比向量加法和数据融合方法的性能高出32%,平均高出24%。此外,就有效性而言,QLN总是优于单一最佳查询表示。
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