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CIKM
2007
Springer

Improve retrieval accuracy for difficult queries using negative feedback

13 years 8 months ago
Improve retrieval accuracy for difficult queries using negative feedback
How to improve search accuracy for difficult topics is an underaddressed, yet important research question. In this paper, we consider a scenario when the search results are so poor that none of the top-ranked documents is relevant to a user's query, and propose to exploit negative feedback to improve retrieval accuracy for such difficult queries. Specifically, we propose to learn from a certain number of top-ranked non-relevant documents to rerank the rest unseen documents. We propose several approaches to penalizing the documents that are similar to the known non-relevant documents in the language modeling framework. To evaluate the proposed methods, we adapt standard TREC collections to construct a test collection containing only difficult queries. Experiment results show that the proposed approaches are effective for improving retrieval accuracy of difficult queries. Categories and Subject Descriptors: H.3.3 [Information Storage and Retrieval]: Retrieval models General Terms: ...
Xuanhui Wang, Hui Fang, ChengXiang Zhai
Added 13 Aug 2010
Updated 13 Aug 2010
Type Conference
Year 2007
Where CIKM
Authors Xuanhui Wang, Hui Fang, ChengXiang Zhai
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