Computing at Glasgow University
Paper ID: 7976

Evaluating Implicit Feedback Models Using Searcher Simulations
White,R.M. Ruthven,I. Jose,J.M. Van Rijsbergen,C.J.

Publication Type: Journal
Appeared in: ACM Transactions on Information Systems (TOIS) Vol. 23, Issue:3
Page Numbers : 325-361
Publisher: ACM
Year: 2005
ISBN/ISSN: ISSN:1046-8188

In this article we describe an evaluation of relevance feedback (RF) algorithms using searcher simulations. Since these algorithms select additional terms for query modification based on inferences made from searcher interaction, not on relevance information searchers explicitly provide (as in traditional RF), we refer to them as implicit feedback models. We introduce six different models that base their decisions on the interactions of searchers and use different approaches to rank query modification terms. The aim of this article is to determine which of these models should be used to assist searchers in the systems we develop. To evaluate these models we used searcher simulations that afforded us more control over the experimental conditions than experiments with human subjects and allowed complex interaction to be modeled without the need for costly human experimentation. The simulation-based evaluation methodology measures how well the models learn the distribution of terms across relevant documents (i.e., learn what information is relevant) and how well they improve search effectiveness (i.e., create effective search queries). Our findings show that an implicit feedback model based on Jeffrey's rule of conditioning outperformed other models under investigation.

Keywords: User simulations, evaluation, implicit feedback, relevance feedback

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