Sequential recommendation systems alleviate the problem of information overload, and have attracted increasing attention in the literature. Most prior works usually obtain an overall representation based on the user's behavior sequence, which can not sufficiently reflect the multiple interests of the user. To this end, we propose a novel method called PIMI to mitigate this issue. PIMI can model the user's multi-interest representation effectively by considering both the periodicity and interactivity in the item sequence. Specifically, we design a periodicity-aware module to utilize the time interval information between user's behaviors. Meanwhile, an ingenious graph is proposed to enhance the interactivity between items in user's behavior sequence, which can capture both global and local item features. Finally, a multi-interest extraction module is applied to describe user's multiple interests based on the obtained item representation. Extensive experiments on two real-world datasets Amazon and Taobao show that PIMI outperforms state-of-the-art methods consistently.
翻译:序列建议系统减轻信息超载问题,并引起文献中越来越多的注意。 多数先前的作品通常根据用户的行为序列获得总体代表,无法充分反映用户的多重利益。 为此,我们提议了一个名为PIMI的新颖方法来缓解这一问题。 PIMI可以通过在项目序列中考虑周期性和互动性来有效地模拟用户的多重利益代表。 具体地说, 我们设计了一个周期认知模块来利用用户行为之间的时间间隔信息。 同时, 提出了一个巧妙的图表来增强用户行为序列中项目之间的相互作用, 它可以捕捉到全球和地方项目特征。 最后, 应用一个多重利益提取模块来根据获得的项目代表来描述用户的多重利益。 对亚马逊和陶保两个真实世界数据集进行的广泛实验显示, PIMI 持续地超越了状态的艺术方法 。