学习旅行推销员问题需要重新思考概括

IF 0.5 4区 计算机科学 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Chaitanya K. Joshi, Quentin Cappart, Louis-Martin Rousseau, T. Laurent
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引用次数: 31

摘要

图组合优化问题(如旅行销售人员问题(TSP))的神经网络求解器的端到端训练最近引起了人们的极大兴趣,但在只有几百个节点的图之外仍然难以处理且效率低下。虽然最先进的TSP学习驱动方法在非常小的规模上训练时与经典求解器表现接近,但它们无法将学习到的策略推广到实际规模的更大实例。这项工作提出了一个端到端的神经组合优化管道,它结合了最近的几篇论文,以识别归纳偏差、模型架构和学习算法,这些算法可以促进泛化到比训练中看到的更大的实例。我们的对照实验为这种零概率泛化提供了第一个原则性研究,揭示了在训练数据之外的外推需要重新思考神经组合优化管道,从网络层和学习范式到评估协议。此外,我们通过管道的视角分析了深度学习解决路由问题的最新进展,并提供了刺激未来研究的新方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning the travelling salesperson problem requires rethinking generalization
End-to-end training of neural network solvers for graph combinatorial optimization problems such as the Travelling Salesperson Problem (TSP) have seen a surge of interest recently, but remain intractable and inefficient beyond graphs with few hundreds of nodes. While state-of-the-art learning-driven approaches for TSP perform closely to classical solvers when trained on trivially small sizes, they are unable to generalize the learnt policy to larger instances at practical scales. This work presents an end-to-end neural combinatorial optimization pipeline that unifies several recent papers in order to identify the inductive biases, model architectures and learning algorithms that promote generalization to instances larger than those seen in training. Our controlled experiments provide the first principled investigation into such zero-shot generalization, revealing that extrapolating beyond training data requires rethinking the neural combinatorial optimization pipeline, from network layers and learning paradigms to evaluation protocols. Additionally, we analyze recent advances in deep learning for routing problems through the lens of our pipeline and provide new directions to stimulate future research.
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来源期刊
Constraints
Constraints 工程技术-计算机:理论方法
CiteScore
2.20
自引率
0.00%
发文量
17
审稿时长
>12 weeks
期刊介绍: Constraints provides a common forum for the many disciplines interested in constraint programming and constraint satisfaction and optimization, and the many application domains in which constraint technology is employed. It covers all aspects of computing with constraints: theory and practice, algorithms and systems, reasoning and programming, logics and languages.
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