Graph Convolutional Networks (GCNs) have been widely used due to their outstanding performance in processing graph-structured data. However, the undirected graphs limit their application scope. In this paper, we extend spectral-based graph convolution to directed graphs by using first- and second-order proximity, which can not only retain the connection properties of the directed graph, but also expand the receptive field of the convolution operation. A new GCN model, called DGCN, is then designed to learn representations on the directed graph, leveraging both the first- and second-order proximity information. We empirically show the fact that GCNs working only with DGCNs can encode more useful information from graph and help achieve better performance when generalized to other models. Moreover, extensive experiments on citation networks and co-purchase datasets demonstrate the superiority of our model against the state-of-the-art methods.
翻译:由于在处理图表结构化数据方面表现出色,因此广泛使用图集网络(GCN),然而,非方向图集限制了其应用范围。在本文中,我们通过使用一等和二等接近,将光谱图集扩展至定向图集,不仅能够保留定向图集的连接特性,而且还可以扩大革命行动的可接受领域。后来设计了一个新的GCN模型,称为DGCN, 目的是利用第一等和第二等相近信息,在定向图上进行表述。我们从经验上表明,只有与DGCN公司合作的GCN公司才能从图表中将更有用的信息编码,并在与其他模型比较时帮助取得更好的性能。此外,关于引用网络和共同购买数据集的广泛实验显示了我们模型相对于最新方法的优越性。