Reinforcement Learning and Additional Rewards for the Traveling Salesman Problem

U. Mele, Xiaochen Chou, L. Gambardella, R. Montemanni
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引用次数: 4

Abstract

A comprehensive literature on the Traveling Salesman Problem (TSP) is available, and this problem has become a valuable benchmark to test new heuristic methods for general Combinatorial Optimisation problems. For this reason, recently developed Deep Learning-driven heuristics have been tried on the TSP. These Deep Learning frameworks use the city coordinates as inputs, and are trained using reinforcement learning to predict a distribution over the TSP feasible solutions. The aim of the present work is to show how easy-to-calculate Combinatorial Optimization concepts can improve the performances of such systems. In particular, we show how passing Minimum Spanning Tree information during training can lead to significant improvements to the quality of TSP solutions. As a side result, we also propose a Deep Learning architecture able to predict in real time the optimal length of a TSP instance. The proposed architectures have been tested on random 2D Euclidean graphs with 50 and 100 nodes, showing significant results.
旅行推销员问题的强化学习和附加奖励
关于旅行商问题(TSP)的文献比较丰富,该问题已经成为检验一般组合优化问题的启发式新方法的一个有价值的基准。出于这个原因,最近开发的深度学习驱动的启发式已经在TSP上进行了尝试。这些深度学习框架使用城市坐标作为输入,并使用强化学习进行训练,以预测TSP可行解决方案的分布。现在的工作的目的是说明容易计算组合优化的概念可以提高这些系统的性能。特别是,我们展示了在训练期间传递最小生成树信息如何显著提高TSP解决方案的质量。作为附带结果,我们还提出了一种能够实时预测TSP实例的最佳长度的深度学习架构。所提出的架构已经在50和100个节点的随机二维欧几里得图上进行了测试,显示出显著的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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