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A Reinforcement Learning Framework for Relevance Feedback

Ali Montazeralghaem, Hamed Zamani, James Allan

202038 citationsDOI

Abstract

We present RML, the first known general reinforcement learning framework for relevance feedback that directly optimizes any desired retrieval metric, including precision-oriented, recall-oriented, and even diversity metrics: RML can be easily extended to directly optimize any arbitrary user satisfaction signal. Using the RML framework, we can select effective feedback terms and weight them appropriately, improving on past methods that fit parameters to feedback algorithms using heuristic approaches or methods that do not directly optimize for retrieval performance. Learning an effective relevance feedback model is not trivial since the true feedback distribution is unknown. Experiments on standard TREC collections compare RML to existing feedback algorithms, demonstrate the effectiveness of RML at optimizing for MAP and α-n DCG, and show the impact on related measures.

Topics & Concepts

Relevance feedbackComputer scienceReinforcement learningRelevance (law)Metric (unit)HeuristicMachine learningPrecision and recallArtificial intelligencePerformance metricData miningImage retrievalLawPolitical scienceEconomicsImage (mathematics)ManagementOperations managementAdvanced Image and Video Retrieval TechniquesInformation Retrieval and Search BehaviorRecommender Systems and Techniques
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