Knowledge Enhancement for Contrastive Multi-Behavior Recommendation
Hongrui Xuan, Yi Liu, Bohan Li, Hongzhi Yin

TL;DR
This paper introduces KMCLR, a novel contrastive learning framework that leverages multi-behavior data and knowledge graphs to improve personalized recommendations, especially under sparse supervision conditions.
Contribution
The work proposes a new multi-behavior contrastive learning approach with knowledge graph integration for enhanced recommendation accuracy.
Findings
KMCLR outperforms state-of-the-art methods on real-world datasets.
The multi-behavior learning module effectively captures personalized user preferences.
Knowledge graph integration improves item representation robustness.
Abstract
A well-designed recommender system can accurately capture the attributes of users and items, reflecting the unique preferences of individuals. Traditional recommendation techniques usually focus on modeling the singular type of behaviors between users and items. However, in many practical recommendation scenarios (e.g., social media, e-commerce), there exist multi-typed interactive behaviors in user-item relationships, such as click, tag-as-favorite, and purchase in online shopping platforms. Thus, how to make full use of multi-behavior information for recommendation is of great importance to the existing system, which presents challenges in two aspects that need to be explored: (1) Utilizing users' personalized preferences to capture multi-behavioral dependencies; (2) Dealing with the insufficient recommendation caused by sparse supervision signal for target behavior. In this work, we…
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Taxonomy
MethodsContrastive Learning
