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A Short Tutorial on The Weisfeiler-Lehman Test And Its Variants

机译:Weisfeiler-Lehman测试的简短教程及其变体

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Graph neural networks are designed to learn functions on graphs. Typically, the relevant target functions are invariant with respect to actions by permutations. Therefore the design of some graph neural network architectures has been inspired by graph-isomorphism algorithms.The classical Weisfeiler-Lehman algorithm (WL)—a graph-isomorphism test based on color refinement—became relevant to the study of graph neural networks. The WL test can be generalized to a hierarchy of higher-order tests, known as k-WL. This hierarchy has been used to characterize the expressive power of graph neural networks, and to inspire the design of graph neural network architectures.A few variants of the WL hierarchy appear in the literature. The goal of this short note is pedagogical and practical: We explain the differences between the WL and folklore-WL formulations, with pointers to existing discussions in the literature. We illuminate the differences between the formulations by visualizing an example.
机译:图形神经网络旨在学习图形上的功能。通常,相关的目标函数相对于置换的动作是不变的。因此,一些图形神经网络架构的设计已经受到绘图同构算法的启发。基于彩色改进的古典Weisfeiler-Lehman算法(WL)-A图同构算法 - 与图形神经网络的研究相关。 WL测试可以推广到高阶测试的层次结构,称为K-WL。该层次结构已被用于表征图形神经网络的表现力,并激发了图形神经网络架构的设计。文献中的一些VL层次结构的变体很少。这项短篇小说的目标是教学和实用:我们解释了WL和民间传说-WL配方之间的差异,指出了文献中存在的讨论。通过可视化示例,我们照亮了制剂之间的差异。

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