Epidemic Graph Convolutional Network

Tyler Derr, Yao Ma, Wenqi Fan, Xiaorui Liu, C. Aggarwal, Jiliang Tang
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引用次数: 27

Abstract

A growing trend recently is to harness the structure of today's big data, where much of the data can be represented as graphs. Simultaneously, graph convolutional networks (GCNs) have been proposed and since seen rapid development. More recently, due to the scalability issues that arise when attempting to utilize these powerful models on real-world data, methodologies have sought the use of sampling techniques. More specifically, minibatches of nodes are formed and then sets of nodes are sampled to aggregate from in one or more layers. Among these methods, the two prominent ways are based on sampling nodes from either a local or global perspective. In this work, we first observe the similarities in the two sampling strategies to that of epidemic and diffusion network models. Then we harness this understanding to fuse together the benefits of sampling from both a local and global perspective while alleviating some of the inherent issues found in both through the use of a low-dimensional approximation for the path-based Katz similarity measure. Our proposed framework, Epidemic Graph Convolutional Network (EGCN), is thus able to achieve improved performance over sampling from just one of the two perspectives alone. Empirical experiments are performed on several public benchmark datasets to verify the effectiveness over existing methodologies for the node classification task and we furthermore present some empirical parameter analysis of EGCN.
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流行图卷积网络
最近一个日益增长的趋势是利用当今大数据的结构,其中大部分数据可以用图表表示。与此同时,图卷积网络(GCNs)也被提出并迅速发展。最近,由于试图在真实世界的数据上利用这些强大的模型时出现的可伸缩性问题,方法已经寻求使用抽样技术。更具体地说,形成小批节点,然后采样节点集,从一个或多个层中进行聚合。在这些方法中,两种突出的方法是基于局部或全局视角的采样节点。在这项工作中,我们首先观察到两种采样策略与流行病和扩散网络模型的相似之处。然后,我们利用这种理解,从局部和全局的角度融合采样的好处,同时通过使用基于路径的Katz相似性度量的低维近似来缓解两者中发现的一些固有问题。因此,我们提出的框架流行病图卷积网络(EGCN)能够仅从两个角度中的一个角度实现更好的采样性能。在几个公开的基准数据集上进行了实证实验,验证了EGCN方法在节点分类任务中的有效性,并进一步给出了EGCN的一些经验参数分析。
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