A Two-Stage Ranking Scheme for Pseudo Relevance Feedback

Rong Yan, Guanglai Gao
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引用次数: 1

Abstract

As for the majority methods of Pseudo Relevance Feedback (PRF), the document in pseudo relevant set is generally divided into the relevant and the non-relevant according to user query. It is so coarse that the lower robustness of PRF, because there is still some relevant information in the non-relevant document and non-relevant information in the relevant document. A novel ranking scheme is proposed in this paper in order to accomplish a higher quality of pseudo relevant set. We try to realize automatically topic content analysis for pseudo relevant set, and divide pseudo relevant set into the relevant and the non-relevant at the document content level, so as to extract semantic relevant content for further selecting good expansion terms based on a smaller granularity, which would not worry about the cases that the top-ranked documents contain very few relevant documents. The experimental results on real Chinese collection show that our scheme can significantly improve the performance of retrieval.
伪相关反馈的两阶段排序方案
在大多数伪相关反馈(Pseudo Relevance Feedback, PRF)方法中,一般根据用户查询将伪相关集中的文档分为相关和不相关。由于过于粗糙,使得PRF的鲁棒性较低,因为在非相关文档中仍然存在一些相关信息,在相关文档中也存在一些非相关信息。为了获得更高质量的伪相关集,本文提出了一种新的排序方案。我们尝试实现对伪相关集的自动主题内容分析,在文档内容层面将伪相关集划分为相关和不相关,提取语义相关内容,以更小的粒度选择好的扩展词,不担心排名前几位的文档包含的相关文档很少的情况。在真实中文数据集上的实验结果表明,该方案能显著提高检索性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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