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GLOP: Learning Global Partition and Local Construction for Solving Large-Scale Routing Problems in Real-Time

Haoran Ye, Jiarui Wang, Helan Liang, Zhiguang Cao, Yong Li, Fanzhang Li

2024Proceedings of the AAAI Conference on Artificial Intelligence29 citationsDOIOpen Access PDF

Abstract

The recent end-to-end neural solvers have shown promise for small-scale routing problems but suffered from limited real-time scaling-up performance. This paper proposes GLOP (Global and Local Optimization Policies), a unified hierarchical framework that efficiently scales toward large-scale routing problems. GLOP hierarchically partitions large routing problems into Travelling Salesman Problems (TSPs) and TSPs into Shortest Hamiltonian Path Problems. For the first time, we hybridize non-autoregressive neural heuristics for coarse-grained problem partitions and autoregressive neural heuristics for fine-grained route constructions, leveraging the scalability of the former and the meticulousness of the latter. Experimental results show that GLOP achieves competitive and state-of-the-art real-time performance on large-scale routing problems, including TSP, ATSP, CVRP, and PCTSP. Our code is available at: https://github.com/henry-yeh/GLOP.

Topics & Concepts

Partition (number theory)Computer scienceScale (ratio)Network partitionRouting (electronic design automation)Distributed computingMathematicsGeographyComputer networkCartographyCombinatoricsVLSI and FPGA Design TechniquesRobotic Path Planning AlgorithmsMobile Agent-Based Network Management