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Graph Coloring with Physics-Inspired Graph Neural Networks

Published 3 Feb 2022 in cs.LG, cond-mat.dis-nn, cs.AI, math.OC, and quant-ph | (2202.01606v3)

Abstract: We show how graph neural networks can be used to solve the canonical graph coloring problem. We frame graph coloring as a multi-class node classification problem and utilize an unsupervised training strategy based on the statistical physics Potts model. Generalizations to other multi-class problems such as community detection, data clustering, and the minimum clique cover problem are straightforward. We provide numerical benchmark results and illustrate our approach with an end-to-end application for a real-world scheduling use case within a comprehensive encode-process-decode framework. Our optimization approach performs on par or outperforms existing solvers, with the ability to scale to problems with millions of variables.

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