This paper provides a systematic overview of machine learning methods applied to solve NP-hard Vehicle Routing Problems (VRPs). Recently, there has been a great interest from both machine learning and operations research communities to solve VRPs either by pure learning methods or by combining them with the traditional hand-crafted heuristics. We present the taxonomy of the studies for learning paradigms, solution structures, underlying models, and algorithms. We present in detail the results of the state-of-the-art methods demonstrating their competitiveness with the traditional methods. The paper outlines the future research directions to incorporate learning-based solutions to overcome the challenges of modern transportation systems.
翻译:本文件系统地概述了用于解决NP硬车辆运行问题的机器学习方法。最近,机器学习和操作研究界都非常希望通过纯学习方法或与传统手工制作的休养法相结合来解决VRP问题。我们介绍了学习范式、解决方案结构、基本模型和算法研究的分类。我们详细介绍了展示其与传统方法竞争力的最新方法的结果。文件概述了未来研究方向,以纳入学习解决方案,克服现代运输系统的挑战。