Authors
Tetsuya Sakai, Toshihiko Manabe, Makoto Koyama
Publication date
2005/6/1
Journal
ACM Transactions on Asian Language Information Processing (TALIP)
Volume
4
Issue
2
Pages
111-135
Publisher
ACM
Description
Although Pseudo-Relevance Feedback (PRF) is a widely used technique for enhancing average retrieval performance, it may actually hurt performance for around one-third of a given set of topics. To enhance the reliability of PRF, Flexible PRF has been proposed, which adjusts the number of pseudo-relevant documents and/or the number of expansion terms for each topic. This paper explores a new, inexpensive Flexible PRF method, called Selective Sampling, which is unique in that it can skip documents in the initial ranked output to look for more “novel” pseudo-relevant documents. While Selective Sampling is only comparable to Traditional PRF in terms of average performance and reliability, per-topic analyses show that Selective Sampling outperforms Traditional PRF almost as often as Traditional PRF outperforms Selective Sampling. Thus, treating the top P documents as relevant is often not the best …
Total citations
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Scholar articles
T Sakai, T Manabe, M Koyama - ACM Transactions on Asian Language Information …, 2005