论文标题

基于合理成本分担的机制,分散的乘车共享和车辆通行

Decentralized Ride-Sharing and Vehicle-Pooling Based on Fair Cost-Sharing Mechanisms

论文作者

Chau, Sid Chi-Kin, Shen, Shuning, Zhou, Yue

论文摘要

乘车共享或车辆驾驶允许通勤者自发地组合运输成本分配。这已成为共享经济新兴范式的流行趋势。支持有效乘车共享的一个关键组件是配对合适的通勤者的匹配机制。传统上,匹配是以集中式进行的,因此,操作员根据全球目标(例如所有通勤者的总成本)安排乘车共享。但是,共享骑行是一个分散的决策范式,通勤者是自我利益的,只有基于个人付款的动机。特别是,尚不清楚如何在通勤者之间公平地分享运输成本,以及在分散的乘车共享方面的成本分担后果。本文阐明了基于稳定匹配的分散乘车共享和车辆通行机构的原理,因此没有人会更好地偏离稳定的匹配结果。我们研究各种合理的成本分担机制和诱导的稳定匹配结果。我们将稳定的匹配成果与社会最佳结果(可以最大程度地减少总成本)的理论界限进行比较,并表明几种公平的成本分担机制可以实现高度的社会最优性。我们还通过对纽约市出租车旅行数据集的数据分析对出租车共享的实证研究来证实我们的结果,并为有效的分散机制提供了有效的见解,以实用乘车共享和车辆 - 驾驶。

Ride-sharing or vehicle-pooling allows commuters to team up spontaneously for transportation cost sharing. This has become a popular trend in the emerging paradigm of sharing economy. One crucial component to support effective ride-sharing is the matching mechanism that pairs up suitable commuters. Traditionally, matching has been performed in a centralized manner, whereby an operator arranges ride-sharing according to a global objective (e.g., total cost of all commuters). However, ride-sharing is a decentralized decision-making paradigm, where commuters are self-interested and only motivated to team up based on individual payments. Particularly, it is not clear how transportation cost should be shared fairly between commuters, and what ramifications of cost-sharing are on decentralized ride-sharing. This paper sheds light on the principles of decentralized ride-sharing and vehicle-pooling mechanisms based on stable matching, such that no one would be better off to deviate from a stable matching outcome. We study various fair cost-sharing mechanisms and the induced stable matching outcomes. We compare the stable matching outcomes with a social optimal outcome (that minimizes total cost) by theoretical bounds of social optimality ratios, and show that several fair cost-sharing mechanisms can achieve high social optimality. We also corroborate our results with an empirical study of taxi sharing under fair cost-sharing mechanisms by a data analysis on New York City taxi trip dataset, and provide useful insights on effective decentralized mechanisms for practical ride-sharing and vehicle-pooling.

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