Bi-type multi-relational heterogeneous graph (BMHG) is one of the most common graphs in practice, for example, academic networks, e-commerce user behavior graph and enterprise knowledge graph. It is a critical and challenge problem on how to learn the numerical representation for each node to characterize subtle structures. However, most previous studies treat all node relations in BMHG as the same class of relation without distinguishing the different characteristics between the intra-class relations and inter-class relations of the bi-typed nodes, causing the loss of significant structure information. To address this issue, we propose a novel Dual Hierarchical Attention Networks (DHAN) based on the bi-typed multi-relational heterogeneous graphs to learn comprehensive node representations with the intra-class and inter-class attention-based encoder under a hierarchical mechanism. Specifically, the former encoder aggregates information from the same type of nodes, while the latter aggregates node representations from its different types of neighbors. Moreover, to sufficiently model node multi-relational information in BMHG, we adopt a newly proposed hierarchical mechanism. By doing so, the proposed dual hierarchical attention operations enable our model to fully capture the complex structures of the bi-typed multi-relational heterogeneous graphs. Experimental results on various tasks against the state-of-the-arts sufficiently confirm the capability of DHAN in learning node representations on the BMHGs.
翻译:双型多关系多元图(BMHG)是实践中最常见的图表之一,例如学术网络、电子商业用户行为图和企业知识图。对于如何学习每个节点的数字代表度以辨别微妙结构而言,这是一个关键和棘手的问题。然而,以往的大多数研究将BMHG中的所有节点关系都视为同一类别的关系,而不区分双型节点内部关系和类际关系的不同特点,造成重要结构信息的损失。为了解决这一问题,我们提议在双型多关系图的基础上建立一个新型双级高层注意网络(DHAN),以便学习与等级机制下基于分类和类际注意的编码导线的全面节点代表。具体地说,以前的编码汇总了同一类型节点的信息,而后一种汇总了不同类型邻居的互不表示。此外,为了在BMHG中足够建模多关系信息,我们采用了一种新提出的双级的多关系网点配置结构图。我们用了一个跨级结构结构模型,从而使得我们提出的双级的双级模型模型能够对双级模型的模型的模型化G结构结构结构进行充分的实验性研究。