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Exploring the dynamics of surge pricing in mobility-on-demand taxi services

机译:探索按需出行出租车服务中激增定价的动态

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Dynamic pricing implemented in the form of a surge price multiplier (SPM) by mobility-on-demand services such as Uber, Lyft, etc. have significantly altered the demand-supply dynamics of the fixed fare rate traditional taxi market. However, it bears a fair share of criticism for being opaque, opportunistic, and socially insensitive, especially during large public events and emergency situations. In this paper, we collect and mine the operational data of one of the largest mobility service provider: Uber in the New York City (NYC) to understand the underlying mechanism behind the dynamic pricing generation. We find the common spatiotemporal patterns in the SPM and identify the cost-effectiveness of its most popular service, UberX as compared to UberBlack and street hailing taxis. We model the underlying phenomenon behind the SPM generation as a function of demand, supply, the time of the day, the day of the week, and expected time to arrival (ETA) using various machine learning classifiers. Support vector machines, k-nearest neighbor, and decision tree classifiers are found to model the SPM the best with the average classification loss for the 10-fold cross validation being as low as 0.001 for the rapidly changing SPM for UberX.
机译:通过按需移动服务(例如Uber,Lyft等)以激增价格乘数(SPM)形式实施的动态定价已大大改变了固定票价传统出租车市场的供求动态。但是,它因其不透明,机会主义和对社会不敏感而受到相当多的批评,特别是在大型公共事件和紧急情况下。在本文中,我们收集并挖掘了最大的移动服务提供商之一:纽约市的优步(NYC)的运营数据,以了解动态定价生成背后的潜在机制。我们在SPM中找到了常见的时空模式,并确定了与UberBlack和街头叫车相比,其最受欢迎的服务UberX的成本效益。我们使用各种机器学习分类器,将SPM生成背后的潜在现象建模为需求,供应,一天中的时间,一周中的一天以及预期到达时间(ETA)的函数。支持向量机,k最近邻和决策树分类器被发现可以对SPM进行最佳建模,对于快速变化的UberX SPM,十倍交叉验证的平均分类损失低至0.001。

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