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RBG: Hierarchically Solving Large-Scale Routing Problems in Logistic Systems via Reinforcement Learning
2022
Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining
The large-scale vehicle routing problems (VRPs) are defined based on the classical VRPs with thousands of customers. It is an important optimization problem in modern logistic systems, since efficiently obtaining high-quality solutions can greatly reduce operation expenses as well as improve customer satisfaction. Most existing algorithms, including traditional non-learning heuristics and learning-based methods, only perform well on small-scale instances with usually no more than hundreds of
doi:10.1145/3534678.3539037
fatcat:vpmgf3dznjaxvejhihvxzirsyi