Publication | Closed Access
Learning diverse rankings with multi-armed bandits
513
Citations
26
References
2008
Year
Unknown Venue
Ranking AlgorithmEngineeringMachine LearningIntelligent Information RetrievalLearning To RankTop K PositionsText MiningNatural Language ProcessingInformation RetrievalData ScienceData MiningRelevance FeedbackDiverse RankingsDiverse RankingKnowledge DiscoveryComputer ScienceSearch Engine DesignExploration V ExploitationRanking Functions
Algorithms for learning to rank Web documents usually assume a document's relevance is independent of other documents. This leads to learned ranking functions that produce rankings with redundant results. In contrast, user studies have shown that diversity at high ranks is often preferred. We present two online learning algorithms that directly learn a diverse ranking of documents based on users' clicking behavior. We show that these algorithms minimize abandonment, or alternatively, maximize the probability that a relevant document is found in the top k positions of a ranking. Moreover, one of our algorithms asymptotically achieves optimal worst-case performance even if users' interests change.
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