Relevance Modeling with Multiple Query Variations

Xiaolu Lu, Oren Kurland
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引用次数: 8

Abstract

The generative theory for relevance and its operational manifestation --- the relevance model --- are based on the premise that a single query is used to represent an information need for retrieval. In this work, we extend the theory and devise novel techniques for relevance modeling using as set of query variations representing the same information need. Our new approach is based on fusion at the term level, the model level, or the document-list level. We theoretically analyze the connections between these methods and provide empirical support of their equivalence using TREC datasets. Specifically, our new approach of inducing relevance models from multiple query variations substantially outperforms relevance model induction from a single query which is the standard practice. Our approach also outperforms fusion over multiple query variations, which is currently one of the best known baselines for several commonly used test collections.
具有多个查询变量的关联建模
关联的生成理论及其可操作的表现形式——关联模型——是基于一个前提,即使用单个查询来表示需要检索的信息。在这项工作中,我们扩展了该理论,并设计了新的相关建模技术,使用一组表示相同信息需求的查询变体。我们的新方法基于术语级、模型级或文档列表级的融合。我们从理论上分析了这些方法之间的联系,并利用TREC数据集为它们的等价性提供了实证支持。具体来说,我们从多个查询变量中归纳相关模型的新方法大大优于从单个查询中归纳相关模型的标准方法。我们的方法在多个查询变量上的性能也优于融合,这是目前几种常用测试集合最著名的基线之一。
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