A Graph Neural Network with Type-Feature Attention for Node Classification on Heterogeneous Graphs

Kang Chen, Xueying Li, Tao Gong, Dehong Qiu
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Abstract

Heterogeneous graphs are emerging as a prevalent form of data representation to capture complex structures and different relationships between a set of different types of objects in diverse disciplines. Node classification on heterogeneous graphs is a basic and critical task that remains unaddressed until the present day. Graph Neural Network is a powerful tool and has demonstrated remarkable performance in various tasks on graphs. However, most existing graph neural networks are based on the homophily assumption, which may be unsuitable for heterogeneous graphs. In this paper, we propose a graph neural network with type-feature attention mechanism to solve the problem of node classification on heterogeneous graphs. As a heterogeneous graph is composed of a group of edges between different types of nodes, it is reasonable to assume that each type of edge plays a different role in message propagation with different importance. An attention mechanism that considers the edge type and the features of the end nodes of the corresponding edge is built and incorporated into the process of message propagation of the graph neural network, by which the different heterogeneous information of nodes and edges is used jointly in solving the problem of node classification. We evaluate the proposed method on two public real-world heterogeneous graphs and the experimental results demonstrate the effectiveness of the proposed method.
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基于类型特征关注的异构图节点分类图神经网络
异构图正在成为一种流行的数据表示形式,用于捕获不同学科中一组不同类型对象之间的复杂结构和不同关系。异构图上的节点分类是一项基本而关键的任务,至今仍未得到解决。图神经网络是一种强大的工具,在各种图形任务中表现出了卓越的性能。然而,现有的大多数图神经网络都是基于同态假设,这可能不适合异构图。本文提出了一种具有类型-特征注意机制的图神经网络来解决异构图上的节点分类问题。由于异构图是由不同类型节点之间的一组边组成的,因此可以合理地假设每种类型的边在消息传播中起着不同的作用,其重要性也不同。在图神经网络的消息传播过程中,建立了一种考虑边缘类型和相应边缘末端节点特征的注意机制,将节点和边缘的不同异构信息联合使用,解决了节点分类问题。我们在两个公开的现实世界异构图上对所提出的方法进行了评估,实验结果证明了所提出方法的有效性。
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