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A Dynamic Pricing Method for Carpooling Service Based on Coalitional Game Analysis

机译:基于联盟博弈分析的拼车服务动态定价方法

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In recent years, carpooling service provided by corporations like Uber (UberPool), Didi (DidiPool) and Lyft (Lift Link) have become more and more popular. It helps alleviating the urban traffic congestion, by decreasing the empty seats rate. To balance the supply and demand of the taxi service, a dynamic pricing method is needed. More specifically, passengers taking a same vehicle may be charged differently, even thought they shared a most part of a trip. It often challenges the current dynamic pricing policy that how to balance the service and the pricing among different passengers who shared a certain route in their personal trip. In view of this challenge, we propose a new dynamic pricing method and divide the payoff according to the contribution of each passenger. Concretely, we deploy the framework of coalitional game to analyze spatial temporal constraints that guarantee individual benefits from the carpooling coalition. Then, we explore the Nash Product to maximize the utility of passengers as a whole and reduce our problem into a geometry-programming problem. At last we use Shapley value method to measure the specific contribution of each passenger. We conduct a simulated experiment and the results show effectiveness of our method.
机译:近年来,Uber(UberPool),Didi(DidiPool)和Lyft(Lift Link)等公司提供的拼车服务越来越受欢迎。它通过降低空座位率来帮助缓解城市交通拥堵。为了平衡出租车服务的供求关系,需要一种动态的定价方法。更具体地说,乘坐同一辆车的乘客可能会收取不同的费用,甚至认为他们共享了大部分旅程。经常挑战当前的动态定价政策,即如何在共享个人路线中共享特定路线的不同乘客之间平衡服务和定价。针对这一挑战,我们提出了一种新的动态定价方法,并根据每个乘客的贡献来分配收益。具体而言,我们部署联盟博弈框架来分析空间时间约束,这些约束可以保证拼车联盟的个人利益。然后,我们探索Nash产品,以最大程度地提高乘客的整体使用效率,并将我们的问题简化为几何编程问题。最后,我们使用Shapley值法来衡量每位乘客的具体贡献。我们进行了模拟实验,结果表明了该方法的有效性。

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