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Fast Query Expansion Using Approximations of Relevance Models

机译:使用相关模型的近似值进行快速查询扩展

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Pseudo-relevance feedback (PRF) improves search quality by expanding the query using terms from high-ranking documents from an initial retrieval. Although PRF can often result in large gains in effectiveness, running two queries is time consuming, limiting its applicability. We describe a PRF method that uses corpus pre-processing to achieve query-time speeds that are near those of the original queries. Specifically, Relevance Modeling, a language modeling based PRF method, can be recast to benefit substantially from finding pairwise document relationships in advance. Using the resulting Fast Relevance Model (fastRM), we substantially reduce the online retrieval time and still benefit from expansion. We further explore methods for reducing the preprocessing time and storage requirements of the approach, allowing us to achieve up to a 10% increase in MAP over unexpanded retrieval, while only requiring 1% of the time of standard expansion.
机译:伪相关反馈(PRF)通过使用来自初始检索的高级文档中的术语来扩展查询,从而提高了搜索质量。尽管PRF通常可以大大提高有效性,但是运行两个查询非常耗时,从而限制了其适用性。我们描述了一种PRF方法,该方法使用语料库预处理来实现接近原始查询的查询时间速度。具体而言,可以重铸相关性建模,这是一种基于语言建模的PRF方法,可以从预先发现成对文档关系中获得实质性的收益。使用生成的快速相关性模型(fastRM),我们可以大大减少在线检索时间,并且仍然可以从扩展中受益。我们进一步探索了减少该方法的预处理时间和存储要求的方法,从而使我们可以将MAP与未扩展的检索相比最多增加10%,而仅需要标准扩展时间的1%。

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