Learning k-Determinantal Point Processes for Personalized Ranking
Yuli Liu, Christian Walder, Lexing Xie

TL;DR
This paper introduces LkP, a set-based optimization criterion using k-DPPs for personalized ranking, enhancing relevance and diversity in recommendations beyond traditional methods.
Contribution
It proposes a novel set-level ranking criterion based on k-DPPs, improving both relevance and diversity in personalized recommendations.
Findings
LkP improves relevance and diversity in recommendation models.
Applying LkP to existing models yields significant performance gains.
LkP is versatile and effective across different datasets and approaches.
Abstract
The key to personalized recommendation is to predict a personalized ranking on a catalog of items by modeling the user's preferences. There are many personalized ranking approaches for item recommendation from implicit feedback like Bayesian Personalized Ranking (BPR) and listwise ranking. Despite these methods have shown performance benefits, there are still limitations affecting recommendation performance. First, none of them directly optimize ranking of sets, causing inadequate exploitation of correlations among multiple items. Second, the diversity aspect of recommendations is insufficiently addressed compared to relevance. In this work, we present a new optimization criterion LkP based on set probability comparison for personalized ranking that moves beyond traditional ranking-based methods. It formalizes set-level relevance and diversity ranking comparisons through a…
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Taxonomy
TopicsData Management and Algorithms · Multi-Criteria Decision Making · Point processes and geometric inequalities
MethodsSparse Evolutionary Training
