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首页> 外文期刊>OASIcs : OpenAccess Series in Informatics >Rocchio's Model Based on Vector Space Basis Change for Pseudo Relevance Feedback
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Rocchio's Model Based on Vector Space Basis Change for Pseudo Relevance Feedback

机译:基于向量空间基变化的Rocchio模型的伪相关反馈

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摘要

Rocchio's relevance feedback model is a classic query expansion method and it has been shown to be effective in boosting information retrieval performance. The main problem with this method is that the relevant and the irrelevant documents overlap in the vector space because they often share same terms (at least the terms of the query). With respect to the initial vector space basis (index terms), it is difficult to select terms that separate relevant and irrelevant documents. The Vector Space Basis Change is used to separate relevant and irrelevant documents without any modification on the query term weights. In this paper, first, we study how to incorporate Vector Space Basis Change into the Rocchio's model. Second, we propose Rocchio's models based on Vector Space Basis Change, called VSBCRoc models. Experimental results on a TREC collection show that our proposed models are effective.
机译:Rocchio的相关性反馈模型是一种经典的查询扩展方法,并且已证明可以有效地提高信息检索性能。这种方法的主要问题是相关文档和无关文档在向量空间中重叠,因为它们经常共享相同的术语(至少是查询的术语)。关于初始向量空间基础(索引词),很难选择将相关文档和无关文档分开的术语。向量空间基础变更用于在不对查询词权重进行任何修改的情况下分离相关文档和不相关文档。在本文中,首先,我们研究如何将向量空间基础变化纳入Rocchio模型。其次,我们提出基于向量空间基础变化的Rocchio模型,称为VSBCRoc模型。 TREC集合的实验结果表明,我们提出的模型是有效的。

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