When Recommender Systems Meet Fleet Management: Practical Study in Online Driver Repositioning System

Zhe Xu, Chang Men, Pengbo Li, Bicheng Jin, Ge Li, Yue Yang, Chunyang Liu, Ben Wang, X. Qie
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引用次数: 14

Abstract

E-hailing platforms have become an important component of public transportation in recent years. The supply (online drivers) and demand (passenger requests) are intrinsically imbalanced because of the pattern of human behavior, especially in time and locations such as peak hours and train stations. Hence, how to balance supply and demand is one of the key problems to satisfy passengers and drivers and increase social welfare. As an intuitive and effective approach to address this problem, driver repositioning has been employed by some real-world e-hailing platforms. In this paper, we describe a novel framework of driver repositioning system, which meets various requirements in practical situations, including robust driver experience satisfaction and multi-driver collaboration. We introduce an effective and user-friendly driver interaction design called “driver repositioning task”. A novel modularized algorithm is developed to generate the repositioning tasks in real time. To our knowledge, this is the first industry-level application of driver repositioning. We evaluate the proposed method in real-world experiments, achieving a 2% improvement of driver income. Our framework has been fully deployed in the online system of DiDi Chuxing and serves millions of drivers on a daily basis.
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当推荐系统满足车队管理:在线驾驶员重新定位系统的实践研究
近年来,网约车平台已成为公共交通的重要组成部分。供给(网约车司机)和需求(乘客请求)本质上是不平衡的,因为人类的行为模式,特别是在时间和地点,如高峰时间和火车站。因此,如何平衡供给和需求是满足乘客和司机,增加社会福利的关键问题之一。作为解决这一问题的一种直观而有效的方法,司机重新定位已经被一些现实世界的网约车平台采用。在本文中,我们描述了一种新的驾驶员重新定位系统框架,它能满足各种实际情况下的要求,包括鲁棒的驾驶员体验满意度和多驾驶员协作。我们引入了一种有效且人性化的驱动交互设计,称为“驱动重新定位任务”。提出了一种实时生成重定位任务的模块化算法。据我们所知,这是第一个驱动重新定位的行业级应用。我们在现实世界的实验中评估了所提出的方法,实现了2%的司机收入提高。我们的框架已经全面部署在滴滴出行的在线系统中,每天为数百万司机提供服务。
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