Predicting a user's preference in a short anonymous interaction session instead of long-term history is a challenging problem in the real-life session-based recommendation, e.g., e-commerce and media stream. Recent research of the session-based recommender system mainly focuses on sequential patterns by utilizing the attention mechanism, which is straightforward for the session's natural sequence sorted by time. However, the user's preference is much more complicated than a solely consecutive time pattern in the transition of item choices. In this paper, therefore, we study the item transition pattern by constructing a session graph and propose a novel model which collaboratively considers the sequence order and the latent order in the session graph for a session-based recommender system. We formulate the next item recommendation within the session as a graph classification problem. Specifically, we propose a weighted attention graph layer and a Readout function to learn embeddings of items and sessions for the next item recommendation. Extensive experiments have been conducted on two benchmark E-commerce datasets, Yoochoose and Diginetica, and the experimental results show that our model outperforms other state-of-the-art methods.
翻译:以会议为基础的建议系统最近的研究主要侧重于顺序模式,利用关注机制,对会议的自然顺序按时间分类,这是直截了当的。然而,用户的偏好远比在项目选择过渡中单次连续的时间模式复杂得多。因此,在本文件中,我们通过绘制一个届会图来研究项目过渡模式,并提出一个新的模式,共同考虑届会建议系统会议图中的顺序顺序和潜在顺序。我们在会议上将下一个项目建议作为图表分类问题拟订。具体地说,我们提出一个加权关注图层和可读功能,以学习项目和会议嵌入下一个项目建议。已经对两个电子商务基准数据集(Yoochoose和Diginetica)进行了广泛的实验,实验结果显示,我们的模型比其他最先进的方法要完善。