TEA: A Sequential Recommendation Framework via Temporally Evolving Aggregations

计算机科学 可扩展性 骨料(复合) 条件随机场 时间戳 马尔可夫链 推荐系统 利用 图形 协同过滤 序列(生物学) 理论计算机科学 实施 数据挖掘 机器学习 人工智能 生物 数据库 遗传学 复合材料 计算机安全 材料科学 程序设计语言
作者
Zijian Li,Ruichu Cai,Fengzhu Wu,Sili Zhang,Hao Gu,Yuexing Hao,Yuguang Yan
出处
期刊:IEEE transactions on neural networks and learning systems [Institute of Electrical and Electronics Engineers]
卷期号:35 (2): 2628-2639 被引量:2
标识
DOI:10.1109/tnnls.2022.3190534
摘要

Sequential recommendation aims to choose the most suitable items for a user at a specific timestamp given historical behaviors. Existing methods usually model the user behavior sequence based on transition-based methods such as Markov chain. However, these methods also implicitly assume that the users are independent of each other without considering the influence between users. In fact, this influence plays an important role in sequence recommendation since the behavior of a user is easily affected by others. Therefore, it is desirable to aggregate both user behaviors and the influence between users, which are evolved temporally and involved in the heterogeneous graph of users and items. In this article, we incorporate dynamic user-item heterogeneous graphs to propose a novel sequential recommendation framework. As a result, the historical behaviors as well as the influence between users can be taken into consideration. To achieve this, we first formalize sequential recommendation as a problem to estimate conditional probability given temporal dynamic heterogeneous graphs and user behavior sequences. After that, we exploit the conditional random field to aggregate the heterogeneous graphs and user behaviors for probability estimation and employ the pseudo-likelihood approach to derive a tractable objective function. Finally, we provide scalable and flexible implementations of the proposed framework. Experimental results on three real-world datasets not only demonstrate the effectiveness of our proposed method but also provide some insightful discoveries on the sequential recommendation.

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