Exploiting Group-level Behavior Pattern forSession-based Recommendation
Ziyang Wang, Wei Wei, Xian-Ling Mao, Xiao-Li Li, Shanshan Feng

TL;DR
This paper introduces RNMSR, a session-based recommendation model that combines instance-level and group-level user preferences, including repeat consumption patterns, to improve recommendation accuracy.
Contribution
The paper proposes a novel repeat-aware neural mechanism that integrates group-level behavior patterns with instance-level session learning for enhanced recommendations.
Findings
RNMSR outperforms existing methods on three real-world datasets.
Incorporating group-level preferences improves recommendation accuracy.
The model effectively captures repeat consumption behaviors.
Abstract
Session-based recommendation (SBR) is a challenging task, which aims to predict users' future interests based on anonymous behavior sequences. Existing methods leverage powerful representation learning approaches to encode sessions into a low-dimensional space. However, despite such achievements, all the existing studies focus on the instance-level session learning, while neglecting the group-level users' preference, which is significant to model the users' behavior. To this end, we propose a novel Repeat-aware Neural Mechanism for Session-based Recommendation (RNMSR). In RNMSR, we propose to learn the user preference from both instance-level and group-level, respectively: (i) instance-level, which employs GNNs on a similarity-based item-pairwise session graph to capture the users' preference in instance-level. (ii) group-level, which converts sessions into group-level behavior patterns…
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Taxonomy
TopicsRecommender Systems and Techniques · Advanced Bandit Algorithms Research · Image and Video Quality Assessment
