Reinforced Neighborhood Selection Guided Multi-Relational Graph Neural Networks

Hao Peng, Ruitong Zhang, Yingtong Dou, Renyu Yang, Jingyi Zhang, Philip S. Yu
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引用次数: 66

Abstract

Graph Neural Networks (GNNs) have been widely used for the representation learning of various structured graph data, typically through message passing among nodes by aggregating their neighborhood information via different operations. While promising, most existing GNNs oversimplify the complexity and diversity of the edges in the graph and thus are inefficient to cope with ubiquitous heterogeneous graphs, which are typically in the form of multi-relational graph representations. In this article, we propose RioGNN, a novel Reinforced, recursive, and flexible neighborhood selection guided multi-relational Graph Neural Network architecture, to navigate complexity of neural network structures whilst maintaining relation-dependent representations. We first construct a multi-relational graph, according to the practical task, to reflect the heterogeneity of nodes, edges, attributes, and labels. To avoid the embedding over-assimilation among different types of nodes, we employ a label-aware neural similarity measure to ascertain the most similar neighbors based on node attributes. A reinforced relation-aware neighbor selection mechanism is developed to choose the most similar neighbors of a targeting node within a relation before aggregating all neighborhood information from different relations to obtain the eventual node embedding. Particularly, to improve the efficiency of neighbor selecting, we propose a new recursive and scalable reinforcement learning framework with estimable depth and width for different scales of multi-relational graphs. RioGNN can learn more discriminative node embedding with enhanced explainability due to the recognition of individual importance of each relation via the filtering threshold mechanism. Comprehensive experiments on real-world graph data and practical tasks demonstrate the advancements of effectiveness, efficiency, and the model explainability, as opposed to other comparative GNN models.
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增强邻域选择引导的多关系图神经网络
图神经网络(gnn)已被广泛用于各种结构化图数据的表示学习,通常是通过不同的操作聚合节点间的邻域信息来实现节点间的消息传递。虽然有前景,但大多数现有的gnn过于简化了图中边缘的复杂性和多样性,因此在处理普遍存在的异构图时效率低下,这些图通常以多关系图表示的形式出现。在这篇文章中,我们提出了RioGNN,一种新的增强的、递归的、灵活的邻域选择引导的多关系图神经网络架构,在保持关系依赖表示的同时导航神经网络结构的复杂性。我们首先根据实际任务构造一个多关系图,以反映节点、边、属性和标签的异质性。为了避免不同类型节点之间的嵌入过度同化,我们采用了基于节点属性的标签感知神经相似性度量来确定最相似的邻居。提出了一种增强的关系感知邻居选择机制,在聚合来自不同关系的所有邻居信息以获得最终的节点嵌入之前,选择关系中目标节点最相似的邻居。为了提高邻域选择的效率,针对不同尺度的多关系图,提出了一种新的深度和宽度可估计的递归可扩展强化学习框架。RioGNN通过过滤阈值机制识别每个关系的个体重要性,从而学习到更多的判别性节点嵌入,并增强了可解释性。在真实世界图形数据和实际任务上的综合实验表明,与其他比较GNN模型相比,该模型在有效性、效率和模型可解释性方面取得了进步。
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