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Comparison of Fair and Optimum Ridesharing Plans

机译:公平和最佳乘车计划的比较

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摘要

Services like "Uber" and "Lyft" have become widespread in large cities for everyday mobility. This is due to the ease of requesting a ride (you can simply download the mobile app and request a driver on the fly from where you are currently located to your desired destination) and to the cheapness of these services.;Recently, "Uber" and "Lyft" have embraced ride sharing opportunities: a passenger who requests a ride may decide to save a certain amount of money at the price of sharing his/her ride with someone else (which would delay his/her arrival at destination). For what concerns passengers matching, these services attempt to optimize savings at a global level. But a possible scenario is that a passenger A is matched to passenger B, while he/she would have preferred being matched to passenger C, who, in turn, would have preferred A as ride sharing partner as well.;This introduces the concept of "fairness" in ride sharing: if a particular passenger A has not been matched to his/her top preferred passenger B, this means that passenger B preferred to be matched to some other C, and so on recursively.;Fairness is addressed by issuing the optimum plan (i.e., without considering fair shared trips but only total savings at a global level) and, at the same time, applying a compensation scheme which derives from the fair plan: in this way, if a passenger has to pay a higher fare with the optimum plan with respect to the price which would be fairer, then he/she receives a discount according to his/her savings if the fair plan would have been issued instead. In this thesis, we compare the optimum and fair ride sharing plans in different scenarios (new requests are matched to empty taxis or to taxis with passengers on board which will have to dynamically change its route) in order to understand the % redistribution of money that is necessary to apply such a compensation scheme, when fares are based on overall distance traveled.
机译:诸如“ Uber”和“ Lyft”之类的服务已在大城市中广泛用于日常出行。这是由于请求乘车的便捷性(您可以简单地下载移动应用程序并从当前所在的位置向所需的目的地即时请求驾驶员)和这些服务的便宜性。最近,“ Uber” “ Lyft”和“ Lyft”拥有共享乘车的机会:请求乘车的乘客可以决定以与他人共享乘车的价格来节省一定数量的钱(这会延迟他/她到达目的地的时间)。对于与乘客匹配有关的问题,这些服务试图在全球范围内优化节省。但是一种可能的情况是,乘客A与乘客B相匹配,而他/她本来希望与乘客C相匹配,而乘客C又也希望乘客A与搭车共享伙伴相匹配;这引入了概念乘车共享中的“公平性”:如果某个特定的乘客A尚未与其最高优先乘客B相匹配,则意味着该乘客B倾向于与其他C乘客相匹配,依此类推,以此类推。最佳计划(即,不考虑公平的共同旅行,而仅考虑全球范围内的总节省额),并同时应用从公平计划中得出的补偿方案:这样,如果乘客必须支付更高的费用相对于价格而言,使用最佳计划的票价会更公平,然后,如果原本会发布公平计划,则他/她会根据自己的储蓄获得折扣。在本文中,我们将比较不同情况下的最佳和公平乘车方案(新要求匹配空出租车或登机乘客,而出租车必须动态更改路线),以了解货币分配的百分比当票价基于行进的总距离时,有必要应用这种补偿方案。

著录项

  • 作者

    Foti, Luca.;

  • 作者单位

    University of Illinois at Chicago.;

  • 授予单位 University of Illinois at Chicago.;
  • 学科 Computer science.
  • 学位 M.S.
  • 年度 2017
  • 页码 106 p.
  • 总页数 106
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 遥感技术;
  • 关键词

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