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MGCN: Semi-supervised Classification in Multi-layer Graphs with Graph Convolutional Networks

机译:MGCN:具有图卷积网络的多层图中的半监督分类

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Graph embedding is an important approach for graph analysis tasks such as node classification and link prediction. The goal of graph embedding is to find a low dimensional representation of graph nodes that preserves the graph information. Recent methods like Graph Convolutional Network (GCN) try to consider node attributes (if available) besides node relations and learn node embeddings for unsupervised and semi-supervised tasks on graphs. On the other hand, multi-layer graph analysis has been received attention recently. However, the existing methods for multi-layer graph embedding cannot incorporate all available information (like node attributes). Moreover, most of them consider either type of nodes or type of edges, and they do not treat within and between layer edges differently. In this paper, we propose a method called MGCN that utilizes the GCN for multi-layer graphs. MGCN embeds nodes of multilayer graphs using both within and between layers relations and nodes attributes. We evaluate our method on the semi-supervised node classification task. Experimental results demonstrate the superiority of the proposed method to other multi-layer and single-layer competitors and also show the positive effect of using cross-layer edges.
机译:图形嵌入是用于图形分析任务(例如节点分类和链接预测)的重要方法。图嵌入的目的是找到保留图信息的图节点的低维表示。图卷积网络(GCN)等最新方法尝试除了考虑节点关系之外,还考虑节点属性(如果可用),并学习图上非监督和半监督任务的节点嵌入。另一方面,多层图分析最近已受到关注。但是,用于多层图嵌入的现有方法无法合并所有可用信息(例如节点属性)。此外,它们中的大多数都考虑节点的类型或边缘的类型,并且它们对图层边缘之内和之间的对待不会有所不同。在本文中,我们提出了一种称为MGCN的方法,该方法将GCN用于多层图。 MGCN使用图层关系和节点属性之内和之间嵌入多层图的节点。我们在半监督节点分类任务上评估了我们的方法。实验结果证明了该方法相对于其他多层和单层竞争者的优越性,并且还显示了使用跨层边缘的积极效果。

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