Heterogeneous graph neural networks (HGNNs) were proposed for representation learning on structural data with multiple types of nodes and edges. Researchers have developed metapath-based HGNNs to deal with the over-smoothing problem of relation-based HGNNs. However, existing metapath-based models suffer from either information loss or high computation costs. To address these problems, we design a new Metapath Context Convolution-based Heterogeneous Graph Neural Network (MECCH). Specifically, MECCH applies three novel components after feature preprocessing to extract comprehensive information from the input graph efficiently: (1) metapath context construction, (2) metapath context encoder, and (3) convolutional metapath fusion. Experiments on five real-world heterogeneous graph datasets for node classification and link prediction show that MECCH achieves superior prediction accuracy compared with state-of-the-art baselines with improved computational efficiency.
翻译:提议对多种节点和边缘的结构数据进行代言学习。研究人员开发了基于元病的HGNN,以处理基于关系HGN的过度移动问题。然而,现有的基于元病的模型要么存在信息丢失或高计算成本。为了解决这些问题,我们设计了一个新的基于代同体背景的以变异为基础的超异形图像神经网络。具体地说,MECCH在特性预处理后应用了三个新构件,以便高效率地从输入图中提取全面信息:(1) 元病环境构造,(2) 元病环境编码,(3) 转基因元融合。关于五个真实世界的多变形图数据集的实验,用于节点分类和链接预测,表明MECCH在计算效率提高的情况下,比最先进的标准基准实现了较高的预测准确性。