Heterogeneous graph neural networks aim to discover discriminative node embeddings and relations from multi-relational networks.One challenge of heterogeneous graph learning is the design of learnable meta-paths, which significantly influences the quality of learned embeddings.Thus, in this paper, we propose an Attributed Multi-Order Graph Convolutional Network (AMOGCN), which automatically studies meta-paths containing multi-hop neighbors from an adaptive aggregation of multi-order adjacency matrices. The proposed model first builds different orders of adjacency matrices from manually designed node connections. After that, an intact multi-order adjacency matrix is attached from the automatic fusion of various orders of adjacency matrices. This process is supervised by the node semantic information, which is extracted from the node homophily evaluated by attributes. Eventually, we utilize a one-layer simplifying graph convolutional network with the learned multi-order adjacency matrix, which is equivalent to the cross-hop node information propagation with multi-layer graph neural networks. Substantial experiments reveal that AMOGCN gains superior semi-supervised classification performance compared with state-of-the-art competitors.
翻译:异构图神经网络旨在从多关系网络中发现具有鉴别能力的节点嵌入和关系。异构图学习的一个挑战是设计可学习的元路径,它极大地影响了学习到的嵌入的质量。因此,在本文中,我们提出了一种多属性多阶图卷积网络(AMOGCN),该网络通过自适应聚合多阶邻接矩阵自动研究多跳邻居的元路径。该模型首先从手动设计的节点连接中构建不同顺序的邻接矩阵。随后,通过各种顺序的邻接矩阵的自动融合,附加完整的多阶邻接矩阵。该过程受节点语义信息的监督,该信息通过属性评估来自节点同质性。最终,我们利用一个具有学习的多阶邻接矩阵的一层简化图卷积网络,它相当于具有多层图神经网络的跨跃节点信息传播。大量实验证明,与最先进的竞争对手相比,AMOGCN获得了优越的半监督分类性能。