A Universal Sets-level Optimization Framework for Next Set Recommendation
Yuli Liu, Min Liu, Christian Walder, Lexing Xie

TL;DR
This paper introduces a universal sets-level optimization framework for Next Set Recommendation that models entire sets as cohesive entities, integrating diversity and dependency to improve relevance and diversity in recommendations.
Contribution
It proposes a novel sets-level optimization framework using Structured Determinantal Point Process and co-occurrence representation, addressing limitations of previous item-based methods.
Findings
Outperforms previous methods in relevance and diversity
Effectively models set dependencies and diversity
Achieves consistent improvements on real-world datasets
Abstract
Next Set Recommendation (NSRec), encompassing related tasks such as next basket recommendation and temporal sets prediction, stands as a trending research topic. Although numerous attempts have been made on this topic, there are certain drawbacks: (i) Existing studies are still confined to utilizing objective functions commonly found in Next Item Recommendation (NIRec), such as binary cross entropy and BPR, which are calculated based on individual item comparisons; (ii) They place emphasis on building sophisticated learning models to capture intricate dependency relationships across sequential sets, but frequently overlook pivotal dependency in their objective functions; (iii) Diversity factor within sequential sets is frequently overlooked. In this research, we endeavor to unveil a universal and S ets-level optimization framework for N ext Set Recommendation (SNSRec), offering a…
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Taxonomy
TopicsRecommender Systems and Techniques · Scheduling and Timetabling Solutions
MethodsSparse Evolutionary Training
