Supplier Menus for Dynamic Matching in Peer-to-Peer Transportation Platforms

Rosemonde Ausseil, Jennifer A. Pazour, M. Ulmer
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引用次数: 18

Abstract

Peer-to-peer transportation platforms dynamically match requests (e.g., a ride, a delivery) to independent suppliers who are not employed nor controlled by the platform. Thus, the platform cannot be certain that a supplier will accept an offered request. To mitigate this selection uncertainty, a platform can offer each supplier a menu of requests to choose from. Such menus need to be created carefully because there is a trade-off between selection probability and duplicate selections. In addition to a complex decision space, supplier selection decisions are vast and have systematic implications, impacting the platform’s revenue, other suppliers’ experiences (in the form of duplicate selections), and the request waiting times. Thus, we present a multiple scenario approach, repeatedly sampling potential supplier selections, solving the corresponding two-stage decision problems, and combining the multiple different solutions through a consensus algorithm. Extensive computational results using the Chicago Region as a case study illustrate that our method outperforms a set of benchmark policies. We quantify the value of anticipating supplier selection, offering menus to suppliers, offering requests to multiple suppliers at once, and holistically generating menus with the entire system in mind. Our method leads to more balanced assignments by sacrificing some “easy wins” toward better system performance over time and for all stakeholders involved, including increased revenue for the platform, and decreased match waiting times for suppliers and requests.
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点对点运输平台中动态匹配的供应商菜单
点对点运输平台动态地将请求(例如,乘车,送货)匹配到不受平台雇用或控制的独立供应商。因此,平台无法确定供应商是否会接受提供的请求。为了减轻这种选择的不确定性,平台可以为每个供应商提供一个请求菜单供其选择。这样的菜单需要谨慎创建,因为在选择概率和重复选择之间存在权衡。除了复杂的决策空间之外,供应商选择决策是巨大的,具有系统的影响,影响平台的收入、其他供应商的体验(以重复选择的形式)和请求等待时间。因此,我们提出了一种多场景方法,反复采样潜在供应商选择,解决相应的两阶段决策问题,并通过共识算法将多个不同的解决方案组合在一起。使用芝加哥地区作为案例研究的大量计算结果表明,我们的方法优于一组基准策略。我们量化了预测供应商选择、向供应商提供菜单、同时向多个供应商提供请求以及在考虑整个系统的情况下整体生成菜单的价值。我们的方法通过牺牲一些“容易的胜利”来实现更好的系统性能和所有涉众,包括增加平台的收入,减少供应商和请求的匹配等待时间,从而实现更平衡的分配。
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