The prosperous development of e-commerce has spawned diverse recommendation systems. As a matter of fact, there exist rich and complex interactions among various types of nodes in real-world recommendation systems, which can be constructed as heterogeneous graphs. How learn representative node embedding is the basis and core of the personalized recommendation system. Meta-path is a widely used structure to capture the semantics beneath such interactions and show potential ability in improving node embedding. In this paper, we propose Heterogeneous Graph neural network for Recommendation (HGRec) which injects high-order semantic into node embedding via aggregating multi-hops meta-path based neighbors and fuses rich semantics via multiple meta-paths based on attention mechanism to get comprehensive node embedding. Experimental results demonstrate the importance of rich high-order semantics and also show the potentially good interpretability of HGRec.
翻译:电子商务的繁荣发展催生了多种建议系统,事实上,在现实世界建议系统中,各种节点之间有着丰富和复杂的相互作用,可以建为多式图表。如何学习有代表性的节点嵌入是个性化建议系统的基础和核心。Meta-path是一个广泛使用的结构,用来捕捉这种互动下的语义,并显示改进节点嵌入的潜在能力。在本文中,我们提议建议(HGREc)将高层次的语义网络注入节点,通过集成多式多式网点基于元病的邻居和通过基于关注机制的多重元式路径连接丰富的语义,以获得全面的节点嵌入。实验结果表明丰富的高阶语义的重要性,并表明HGREc的潜在良好解释性。