Session-based recommendation (SBR) is a challenging task, which aims at recommending next items based on anonymous interaction sequences. Despite the superior performance of existing methods for SBR, there are still several limitations: (i) Almost all existing works concentrate on single interest extraction and fail to disentangle multiple interests of user, which easily results in suboptimal representations for SBR. (ii) Furthermore, previous methods also ignore the multi-form temporal information, which is significant signal to obtain current intention for SBR. To address the limitations mentioned above, we propose a novel method, called \emph{Temporal aware Multi-Interest Graph Neural Network} (TMI-GNN) to disentangle multi-interest and yield refined intention representations with the injection of two level temporal information. Specifically, by appending multiple interest nodes, we construct a multi-interest graph for current session, and adopt the GNNs to model the item-item relation to capture adjacent item transitions, item-interest relation to disentangle the multi-interests, and interest-item relation to refine the item representation. Meanwhile, we incorporate item-level time interval signals to guide the item information propagation, and interest-level time distribution information to assist the scattering of interest information. Experiments on three benchmark datasets demonstrate that TMI-GNN outperforms other state-of-the-art methods consistently.
翻译:基于届会的建议(SBR)是一项具有挑战性的任务,目的是根据匿名互动序列建议下一个项目。尽管目前SBR的现有方法表现优异,但仍存在若干限制:(一)几乎所有现有工作都集中在单一利益提取上,未能解析用户的多种利益,这很容易导致SBR的表达方式不尽人意。 (二)此外,以往的方法也忽略了多种形式的时间信息,这是获得SBR当前意向的重要信号。为解决上述限制,我们提议了一种新颖方法,称为“当前了解多利益多面形神经网络” (TMI-GNNN)来分解多种利益,在输入两个层次的时间信息后产生完善的意图表示。具体地说,通过附加多个利益节,我们为本届会议构建了一个多种利益图,采用GNNes来模拟项目与相邻项目过渡的关系、项目与消解多种利益的关系,以及与改进项目代表关系有关的利息项目。同时,我们将项目一级的时间间隔信号纳入T级数据库,以显示基准级数据分配方式的连续时间间隔。