In this paper, we present a comprehensive, in-depth survey of the literature on reinforcement learning approaches to decision optimization problems in a typical ridesharing system. Papers on the topics of rideshare matching, vehicle repositioning, ride-pooling, routing, and dynamic pricing are covered. Most of the literature has appeared in the last few years, and several core challenges are to continue to be tackled: model complexity, agent coordination, and joint optimization of multiple levers. Hence, we also introduce popular data sets and open simulation environments to facilitate further research and development. Subsequently, we discuss a number of challenges and opportunities for reinforcement learning research on this important domain.
翻译:在本文中,我们全面、深入地调查了在典型的搭便车共享系统中加强决策优化问题学习方法的文献,讨论了搭载比对齐、车辆重新定位、搭载合用、路由和动态定价等专题的论文,大多数文献是在过去几年中出现的,一些核心挑战将继续得到解决:模型复杂性、代理协调以及联合优化多种杠杆。因此,我们还引入了大众数据集和开放模拟环境,以促进进一步的研究和开发。随后,我们讨论了加强这一重要领域的学习研究的若干挑战和机遇。