Publication | Open Access
Relevance feedback revisited
405
Citations
20
References
1992
Year
Unknown Venue
Natural Language ProcessingEngineeringInformation RetrievalData ScienceIntelligent Information RetrievalComputational LinguisticsUser ExperimentKnowledge DiscoveryQuery ModelRelevance FeedbackComputer ScienceQuery ExpansionCorpus LinguisticsText MiningInteractive Information Retrieval
Researchers have found relevance feedback to be effective in interactive information retrieval, although few formal user experiments have been made. In order to run a user experiment on a large document collection, experiments were performed at NIST to complete some of the missing links found in using the probabilistic retrieval model. These experiments, using the Cranfield 1400 collection, showed the importance of query expansion in addition to query reweighting, and showed that adding as few as 20 well-selected terms could result in performance improvements of over 100%. Additionally it was shown that performing multiple iterations of feedback is highly effective.
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