计算机科学
领域(数学分析)
不变(物理)
人工智能
代表(政治)
机器学习
推荐系统
情报检索
数学
数学分析
政治
政治学
法学
数学物理
作者
Tianzi Zang,Yanmin Zhu,Ruohan Zhang,Chunyang Wang,Ke Wang,Jiadi Yu
出处
期刊:ACM Transactions on Information Systems
日期:2023-11-09
卷期号:42 (3): 1-30
被引量:3
摘要
Cross-domain recommendation (CDR), which leverages information collected from other domains, has been empirically demonstrated to effectively alleviate data sparsity and cold-start problems encountered in traditional recommendation systems. However, current CDR methods, including those considering time information, do not jointly model the general and current interests within and across domains, which is pivotal for accurately predicting users’ future interactions. In this article, we propose a Contrastive learning-enhanced Multi-View interest learning model (CMVCDR) for cross-domain sequential recommendation. Specifically, we design a static view and a sequential view to model uses’ general interests and current interests, respectively. We divide a user’s general interest representation into a domain-invariant part and a domain-specific part. A cross-domain contrastive learning objective is introduced to impose constraints for optimizing these representations. In the sequential view, we first devise an attention mechanism guided by users’ domain-invariant interest representations to distill cross-domain knowledge pertaining to domain-invariant factors while reducing noise from irrelevant factors. We further design a domain-specific interest-guided temporal information aggregation mechanism to generate users’ current interest representations. Extensive experiments demonstrate the effectiveness of our proposed model compared with state-of-the-art methods.
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