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Contrastive Self-supervised Learning in Recommender Systems: A Survey

Mengyuan Jing, Yanmin Zhu, Tianzi Zang, Ke Wang

2023ACM Transactions on Information Systems102 citationsDOI

Abstract

Deep learning-based recommender systems have achieved remarkable success in recent years. However, these methods usually heavily rely on labeled data (i.e., user-item interactions), suffering from problems such as data sparsity and cold-start. Self-supervised learning, an emerging paradigm that extracts information from unlabeled data, provides insights into addressing these problems. Specifically, contrastive self-supervised learning, due to its flexibility and promising performance, has attracted considerable interest and recently become a dominant branch in self-supervised learning-based recommendation methods. In this survey, we provide an up-to-date and comprehensive review of current contrastive self-supervised learning-based recommendation methods. Firstly, we propose a unified framework for these methods. We then introduce a taxonomy based on the key components of the framework, including view generation strategy, contrastive task, and contrastive objective. For each component, we provide detailed descriptions and discussions to guide the choice of the appropriate method. Finally, we outline open issues and promising directions for future research.

Topics & Concepts

Computer scienceArtificial intelligenceRecommender systemTaxonomy (biology)Flexibility (engineering)Machine learningKey (lock)Deep learningTask (project management)Supervised learningOpen researchData scienceWorld Wide WebArtificial neural networkStatisticsBotanyBiologyEconomicsManagementComputer securityMathematicsRecommender Systems and TechniquesExpert finding and Q&A systemsAdvanced Graph Neural Networks
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