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基于时序感知和长短期兴趣融合的序列推荐
Sequential recommendation based on temporal perception and fusion of long-term and short-term interests
【摘要】 针对序列推荐模型对用户长期兴趣建模过程中,并未考虑与侧边信息的深度联系以及常常忽略用户近期内的多次交互行为的问题,提出一种基于时序感知和长短期兴趣融合的序列推荐方法。结合项目的侧边信息,设计全新的虚拟类目的自由路由机制对用户的长期兴趣进行建模,增强模型对用户长期行为的建模能力。考虑用户近期内的多次交互并结合属性预测,提升模型对用户短期行为的建模效果。在3个公开数据集上的实验结果表明,各项评估性能均优于其它序列推荐模型。
【Abstract】 In the process of modeling user long-term interests in sequence recommendation models, the deep connection with side information is not considered, and the problem of frequently ignoring multiple interaction behaviors of users in the near future is often addressed. A sequence recommendation method based on temporal perception and fusion of long term and short-term inte-rests was proposed. The side information of the project was combined and a new free routing mechanism for virtual categories was designed to model the long-term interests of users, enhancing the model’s ability to model long-term user behavior. Consi-dering multiple recent user interactions and combining attribute prediction, the modeling effects on user short-term behavior were improved. Results of experiments on three public datasets show that all evaluation performances are superior to that of other sequence recommendation models.
【Key words】 recommendation system; sequence recommendation; self-attention mechanism; short-term and long-term interests coding; feature routing; temporal perception; project properties;
- 【文献出处】 计算机工程与设计 ,Computer Engineering and Design , 编辑部邮箱 ,2025年03期
- 【分类号】TP391.3
- 【下载频次】52