Multiplex networks are complex graph structures in which a set of entities are connected to each other via multiple types of relations, each relation representing a distinct layer. Such graphs are used to investigate many complex biological, social, and technological systems. In this work, we present a novel semi-supervised approach for structure-aware representation learning on multiplex networks. Our approach relies on maximizing the mutual information between local node-wise patch representations and label correlated structure-aware global graph representations to model the nodes and cluster structures jointly. Specifically, it leverages a novel cluster-aware, node-contextualized global graph summary generation strategy for effective joint-modeling of node and cluster representations across the layers of a multiplex network. Empirically, we demonstrate that the proposed architecture outperforms state-of-the-art methods in a range of tasks: classification, clustering, visualization, and similarity search on seven real-world multiplex networks for various experiment settings.
翻译:多式网络是复杂的图形结构,其中一组实体通过多种类型的关系相互连接,每个关系代表不同的层次。这些图表用于调查许多复杂的生物、社会和技术系统。在这项工作中,我们介绍了一种在多式网络上进行结构意识代表性学习的新颖的半监督方法。我们的方法依赖于尽可能扩大当地节点智能补丁表示和标签相关结构认知全球图形表示之间的相互信息,以共同模拟节点和组群结构。具体地说,它利用一种新型的集群认知、节点化全球图形摘要生成战略,以便在多式网络各层之间有效联合建模节点和集群代表。我们巧妙地证明,拟议的结构在一系列任务中(分类、组合、视觉化和在各种实验环境中对七个真实世界多式网络进行类似搜索),超越了最新的最新方法:分类、集群、可视化和类似性搜索。