On the Generalization of Neural Combinatorial Optimization Heuristics

S. Manchanda, Sofia Michel, Darko Drakulic, J. Andreoli
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引用次数: 5

Abstract

Neural Combinatorial Optimization approaches have recently leveraged the expressiveness and flexibility of deep neural networks to learn efficient heuristics for hard Combinatorial Optimization (CO) problems. However, most of the current methods lack generalization: for a given CO problem, heuristics which are trained on instances with certain characteristics underperform when tested on instances with different characteristics. While some previous works have focused on varying the training instances properties, we postulate that a one-size-fit-all model is out of reach. Instead, we formalize solving a CO problem over a given instance distribution as a separate learning task and investigate meta-learning techniques to learn a model on a variety of tasks, in order to optimize its capacity to adapt to new tasks. Through extensive experiments, on two CO problems, using both synthetic and realistic instances, we show that our proposed meta-learning approach significantly improves the generalization of two state-of-the-art models.
神经组合优化启发式的推广
神经组合优化方法最近利用深度神经网络的表达能力和灵活性来学习难组合优化(CO)问题的有效启发式。然而,目前的大多数方法缺乏泛化:对于给定的CO问题,在具有某些特征的实例上训练的启发式方法在具有不同特征的实例上测试时表现不佳。虽然以前的一些工作专注于改变训练实例的属性,但我们假设一个放之四海而皆准的模型是遥不可及的。相反,我们将解决给定实例分布上的CO问题形式化为一个单独的学习任务,并研究元学习技术来学习各种任务上的模型,以优化其适应新任务的能力。通过对两个CO问题的广泛实验,使用合成和现实实例,我们表明我们提出的元学习方法显着提高了两个最先进模型的泛化性。
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