解决拼车效率悖论:优先调度和最优优先集

Varun Krishnan, Ramon Iglesias, Sébastien Martin, Su Wang, Varun Pattabhiraman, G. V. Ryzin
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引用次数: 1

摘要

拼车平台面临着“生产力悖论”,即通过改进调度或定价策略获得的任何效率都不会让司机或乘客受益。我们表明这是传统网约车模型的局限性,也是霍尔-霍顿司机均衡收入假设的结果。为了应对这一挑战,Lyft推出了优先模式(PM),允许司机在特定的优先时间内集中精力工作。我们证明了项目管理解决了生产率悖论。因此,司机的平均收入增加,平台和乘客也受益。实施PM需要对平台的调度和定价政策进行重大更改,但最重要的是需要仔细控制司机的数量,这些司机可以在任何给定的时间提供优先考虑的机会。在本文中,我们引入了一个排队设置来模拟PM的市场动态,并说明了这个控制问题的挑战。然后,我们利用这种直觉来构建一个实时优先级准入控制系统,该系统可以平衡提供优先级的驾驶员数量,并实现期望的生产率提高。Lyft已经在北美成功推出了PM,到目前为止,司机已经完成了数十万小时的驾驶时间。它已经创造了数千万美元的价值,司机、乘客和Lyft分享了这些价值,如果在所有市场推广,它有可能创造更多的价值。最后,我们的内部司机调查显示,它已经得到了司机的好评。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solving the Ride-Sharing Productivity Paradox: Priority Dispatch and Optimal Priority Sets
Ride-sharing platforms face a “productivity paradox,” whereby any efficiency gained through improved dispatch or pricing strategies will not benefit drivers or riders. We show that this is a limit of the traditional ride-hailing model and a consequence of the Hall-Horton driver equilibrium earning hypothesis. In response to this challenge, Lyft introduced Priority Mode (PM), which allows drivers to concentrate their work during specific prioritized hours. We prove that PM solves the productivity paradox. As a result, the average driver earnings increase, and the platform and the riders also benefit. Implementing PM requires significant changes to the platform’s dispatch and pricing policy but most importantly requires careful control of the number of drivers that can be offered the opportunity to be prioritized at any given time. In this paper, we introduce a queuing setting to model the market dynamics of PM and illustrate the challenges of this control problem. We then leverage this intuition to build a real-time priority admission control system that can balance the number of drivers offered priority and achieve the desired productivity increase. Lyft has successfully rolled out PM throughout North America, and drivers have completed hundreds of thousands of driving hours thus far. It has generated tens of millions of dollars of value that the drivers, the riders, and Lyft have shared, with the potential to generate much more when rolled out in all markets. Finally, our internal driver surveys reveal that it has been well received by drivers.
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