The Logic of Graph Neural Networks

Martin Grohe
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引用次数: 57

Abstract

Graph neural networks (GNNs) are deep learning architectures for machine learning problems on graphs. It has recently been shown that the expressiveness of GNNs can be characterised precisely by the combinatorial Weisfeiler-Leman algorithms and by finite variable counting logics. The correspondence has even led to new, higher-order GNNs corresponding to the WL algorithm in higher dimensions.The purpose of this paper is to explain these descriptive characterisations of GNNs.
图神经网络的逻辑
图神经网络(gnn)是用于图上机器学习问题的深度学习架构。最近的研究表明,gnn的表达性可以通过组合Weisfeiler-Leman算法和有限变量计数逻辑精确地表征。这种对应关系甚至导致了新的高阶gnn在高维上对应于WL算法。本文的目的是解释gnn的这些描述性特征。
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