Feb. 12, 2024, 5:43 a.m. | Zehao Dong Muhan Zhang Philip R. O. Payne Michael A Province Carlos Cruchaga Tianyu Zhao Fuhai Li

cs.LG updates on arXiv.org arxiv.org

The expressivity of Graph Neural Networks (GNNs) has been studied broadly in recent years to reveal the design principles for more powerful GNNs. Graph canonization is known as a typical approach to distinguish non-isomorphic graphs, yet rarely adopted when developing expressive GNNs. This paper proposes to maximize the expressivity of GNNs by graph canonization, then the power of such GNNs is studies from the perspective of model stability. A stable GNN will map similar graphs to close graph representations in …

cs.lg design gnns graph graph neural networks graph representation graphs networks neural networks paper power representation representation learning stability

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