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Generative Relevance Feedback with Large Language Models

Iain Mackie, Shubham Chatterjee, Jeff Dalton

202343 citationsDOIOpen Access PDF

Abstract

Current query expansion models use pseudo-relevance feedback to improve first-pass retrieval effectiveness; however, this fails when the initial results are not relevant. Instead of building a language model from retrieved results, we propose Generative Relevance Feedback (GRF) that builds probabilistic feedback models from long-form text generated from Large Language Models. We study the effective methods for generating text by varying the zero-shot generation subtasks: queries, entities, facts, news articles, documents, and essays. We evaluate GRF on document retrieval benchmarks covering a diverse set of queries and document collections, and the results show that GRF methods significantly outperform previous PRF methods. Specifically, we improve MAP between 5-19% and NDCG@10 17-24% compared to RM3 expansion, and achieve state-of-the-art recall across all datasets.

Topics & Concepts

Relevance feedbackComputer scienceRelevance (law)Language modelGenerative grammarSet (abstract data type)Artificial intelligenceProbabilistic logicRanking (information retrieval)Generative modelPrecision and recallInformation retrievalTopic modelRecallNatural language processingLearning to rankMachine learningImage retrievalImage (mathematics)PhilosophyLawLinguisticsProgramming languagePolitical scienceTopic ModelingInformation Retrieval and Search BehaviorExpert finding and Q&A systems
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