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Modeling Term Associations for Ad-Hoc Retrieval Performance Within Language Modeling Framework

机译:语言建模框架中的临时检索性能的建模术语关联

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Previous research has shown that using term associations could improve the effectiveness of information retrieval (IR) systems. However, most of the existing approaches focus on query reformulation. Document reformulation has just begun to be studied recently. In this paper, we study how to utilize term association measures to do document modeling, and what types of measures are effective in document language models. We propose a probabilistic term association measure, compare it to some traditional methods, such as the similarity co-efficient and window-based methods, in the language modeling (LM) framework, and show that significant improvements over query likelihood (QL) retrieval can be obtained. We also compare the method with state-of-the-art document modeling techniques based on latent mixture models.
机译:以前的研究表明,使用术语关联可以提高信息检索(IR)系统的有效性。但是,大多数现有方法都侧重于查询重构。最近刚刚开始研究文件重构。在本文中,我们研究如何利用术语关联措施来做文档建模,以及在文档语言模型中有效的措施类型。我们提出了一种概率术语关联测量,将其与某些传统方法进行比较,例如语言建模(LM)框架中的相似性共同高效和基于窗口的方法,并显示对查询似然(QL)检索的显着改进获得。我们还基于潜在混合模型进行了使用最先进的文档建模技术的方法。

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