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Optimizing Reciprocal Rank with Bayesian Average for improved Next Item Recommendation

Xiangkui Lu, Jun Wu, Jianbo Yuan

202312 citationsDOI

Abstract

Next item recommendation is a crucial task of session-based recommendation. However, the gap between the optimization objective (Binary Cross Entropy) and the ranking metric (Mean Reciprocal Rank) has not been well-explored, resulting in sub-optimal recommendations. In this paper, we propose a novel objective function, namely Adjusted-RR, to directly optimize Mean Reciprocal Rank. Specifically, Adjusted-RR adopts Bayesian Average to adjust Reciprocal Rank loss with Normal Rank loss by creating position-aware weights between them. Adjusted-RR is a plug-and-play objective that is compatible with various models. We apply Adjusted-RR on two base models and two datasets, and experimental results show that it makes a significant improvement in the next item recommendation.

Topics & Concepts

ReciprocalMean reciprocal rankRanking (information retrieval)Computer scienceRank (graph theory)Learning to rankBayesian probabilityBinary numberMetric (unit)Cross entropyEntropy (arrow of time)Task (project management)Artificial intelligenceMathematicsPrinciple of maximum entropyCombinatoricsArithmeticEconomicsOperations managementManagementPhysicsLinguisticsQuantum mechanicsPhilosophyRecommender Systems and TechniquesAdvanced Bandit Algorithms ResearchAdvanced Image and Video Retrieval Techniques