论文标题

图形卷积网络区分随机图模型的功能:简短版本

The Power of Graph Convolutional Networks to Distinguish Random Graph Models: Short Version

论文作者

Magner, Abram, Baranwal, Mayank, Hero III, Alfred O.

论文摘要

图形卷积网络(GCN)是一种用于图表学习的广泛使用方法。我们研究了GCN的功率,作为其层数的函数,以根据其样品图的嵌入来区分不同的随机图模型。特别是,我们考虑的图形模型来自图形,这是无限可交换图模型的最一般参数化,并且是密集图限制理论中研究的中心对象。我们展示了一类无限的图形子,这些图形在切割距离方面进行了良好的分离,并且如果其深度至少在样本图的大小上,则来自非线性激活函数的GCN无法区分。从理论上讲,这些结果匹配了几项先前作品的经验观察。最后,我们显示出一个相反的结果,即满足度剖面分离属性的成对的图形,这是一个非常简单的GCN体系结构就足以区分性。为了证明我们的结果,我们利用与图形上随机步行的连接。

Graph convolutional networks (GCNs) are a widely used method for graph representation learning. We investigate the power of GCNs, as a function of their number of layers, to distinguish between different random graph models on the basis of the embeddings of their sample graphs. In particular, the graph models that we consider arise from graphons, which are the most general possible parameterizations of infinite exchangeable graph models and which are the central objects of study in the theory of dense graph limits. We exhibit an infinite class of graphons that are well-separated in terms of cut distance and are indistinguishable by a GCN with nonlinear activation functions coming from a certain broad class if its depth is at least logarithmic in the size of the sample graph. These results theoretically match empirical observations of several prior works. Finally, we show a converse result that for pairs of graphons satisfying a degree profile separation property, a very simple GCN architecture suffices for distinguishability. To prove our results, we exploit a connection to random walks on graphs.

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