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Spatial-Dynamic Matching Equilibrium Models of New York City Taxi and Uber Markets

机译:纽约市出租车和优步市场的空间动态匹配均衡模型

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摘要

With the rapidly changing landscape for taxis, ride-hailing, and ride-sourcing services, public agencies have an urgent need to understand how such new services impact social welfare: impacts of technologies on matching customers to service providers, evaluating ride-sourcing operations, and evaluating surge pricing policy, among others. We conduct an empirical study to answer this question for Uber using a dynamic spatial equilibrium taxi-matching model. Given a matching function, the spatial distribution of demand activities, and service coverage, the model outputs equilibrium fleet sizes, matches, and social welfare by zone and time of day. Uber provides pickup data for a specific time period in New York City (NYC). Parameters from the model calibrated from medallion cab (Taxi) data are grafted onto the Uber model to supplement the missing information. The Uber model has a root-mean square error of 7.75 matches/zone/interval, which is approximately an 8.52% error. Spatial distribution of responses in demand to fare hikes or vehicle supply to demand surges measurably differ between NYC Taxi and Uber markets. Baseline estimations of welfare indicate that the NYC Taxi industry generates $495,900 in consumer surplus and $1,022,400 in Taxi profits for the 4-h interval, while for the Uber market, the model estimates $73,300 in consumer surplus and $151,300 in Uber profits during the same interval. Spatial-temporal dynamics resulting from fare hike and congestion fee scenarios are analyzed to determine requirements for allocating the congestion charge revenues toward public transit to maintain or improve upon the same consumer surplus.
机译:随着出租车的快速变化景观,乘车和乘坐服务,公共机构有迫切需要了解这些新服务如何影响社会福利:技术对客户对服务提供商的影响,评估乘坐乘坐行动,并评估浪涌定价政策等。我们使用动态空间均衡出租车匹配模型进行实证研究以回答优步的问题。鉴于匹配功能,需求活动的空间分布和服务覆盖,模型输出均衡舰队尺寸,匹配和社会福利的区域和时间。优步提供纽约市(纽约市)的特定时间段的拾取数据。从汇总驾驶室(出租车)数据校准的模型的参数将接枝到UBER模型上,以补充缺失的信息。 UBER模型具有7.75匹配/区域/间隔的根均方误差,其误差约为8.52%。需求的空间分布需要票价徒步旅行或车辆供应,以便在NYC出租车和优步市场之间造成差异的速度差异。福利的基线估计表明,NYC出租车行业在消费者盈余中产生了495,900美元,为4-H期间的出租车利润为1,022,400美元,而对于优步市场,该模型在同一间隔期间估计消费者盈余73,300美元,在相同的间隔期间的优惠利润为151,300美元。分析了由票价票据和拥挤费情景产生的空间动态,以确定对公共交通的拥堵收费,以维持或改善同等消费盈余的要求。

著录项

  • 来源
    《Journal of Transportation Engineering》 |2021年第9期|04021048.1-04021048.20|共20页
  • 作者单位

    NYU C2SMART Ctr Tandon Sch Engn Dept Civil & Urban Engn 6 Metrotech Ctr Brooklyn NY 11201 USA|Catholic Univ Cuenca Acad Unit Engn Ind & Construct Sch Civil Engn Av Amer & Gen Torres Cuenca 010101 Ecuador;

    NYU C2SMART Ctr 6 Metrotech Ctr Brooklyn NY 11201 USA|NYU Tandon Sch Engn Dept Civil & Urban Engn 6 Metrotech Ctr Brooklyn NY 11201 USA;

    NYU C2SMART Ctr Dept Civil & Urban Engn 6 Metrotech Ctr Brooklyn NY 11201 USA|NYU Tandon Sch Engn Ctr Urban Sci & Progress 6 Metrotech Ctr Brooklyn NY 11201 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Uber and taxi demand; Matching models; Spatial dynamic equilibrium; Spatial distribution; Social welfare;

    机译:优步和出租车需求;匹配模型;空间动态均衡;空间分布;社会福利;

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