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Multi-Intention Oriented Contrastive Learning for Sequential Recommendation

Xuewei Li, Aitong Sun, Mankun Zhao, Jian Yu, Kun Zhu, Di Jin, Mei Yu, Ruiguo Yu

2023100 citationsDOI

Abstract

Sequential recommendation aims to capture users' dynamic preferences, in which data sparsity is a key problem. Most contrastive learning models leverage data augmentation to address this problem, but they amplify noises in original sequences. Contrastive learning has the assumption that two views (positive pairs) obtained from the same user behavior sequence must be similar. However, noises typically disturb the user's main intention, which results in the dissimilarity of two views.

Topics & Concepts

Leverage (statistics)Computer scienceKey (lock)Artificial intelligenceRecommender systemSequence (biology)Natural language processingSequence learningMachine learningBiologyGeneticsComputer securityRecommender Systems and TechniquesAdvanced Bandit Algorithms ResearchBayesian Methods and Mixture Models
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