图神经网络的组合优化与推理

Quentin Cappart, D. Chételat, Elias Boutros Khalil, Andrea Lodi, Christopher Morris, Petar Velickovic
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引用次数: 186

摘要

组合优化是运筹学和计算机科学中一个成熟的领域。直到最近,它的方法主要集中在孤立地解决问题实例,忽略了它们在实践中往往源于相关数据分布的事实。然而,近年来人们对使用机器学习,特别是图神经网络,作为组合任务的关键构建块的兴趣激增,要么直接作为求解器,要么通过增强前者。本文对这一新兴领域的最新关键进展进行了概念性回顾,主要针对优化和机器学习方面的研究人员。
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Combinatorial optimization and reasoning with graph neural networks
Combinatorial optimization is a well-established area in operations research and computer science. Until recently, its methods have mostly focused on solving problem instances in isolation, ignoring the fact that they often stem from related data distributions in practice. However, recent years have seen a surge of interest in using machine learning, especially graph neural networks, as a key building block for combinatorial tasks, either directly as solvers or by enhancing the former. This paper presents a conceptual review of recent key advancements in this emerging field, aiming at researchers in both optimization and machine learning.
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