Authors
Ryen W White, Ian Ruthven, Joemon M Jose, CJ Van Rijsbergen
Publication date
2005/7/1
Journal
ACM Transactions on Information Systems (TOIS)
Volume
23
Issue
3
Pages
325-361
Publisher
ACM
Description
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 …
Total citations
20042005200620072008200920102011201220132014201520162017201820192020202120222023202412513151614161271075511222145
Scholar articles
RW White, I Ruthven, JM Jose, CJV Rijsbergen - ACM Transactions on Information Systems (TOIS), 2005