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Estimating latent demand of shared mobility through censored Gaussian Processes

机译:通过审查高斯过程估算共享移动性的潜在需求

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摘要

Transport demand is highly dependent on supply, especially for shared transport services where availability is often limited. As observed demand cannot be higher than available supply, historical transport data typically represents a biased, or censored, version of the true underlying demand pattern. Without explicitly accounting for this inherent distinction, predictive models of demand would necessarily represent a biased version of true demand, thus less effectively predicting the needs of service users. To counter this problem, we propose a general method for censorship-aware demand modeling, for which we derive a censored likelihood function capable of handling time-varying supply. We apply this method to the task of shared mobility demand prediction by incorporating the censored likelihood within a Gaussian Process model, which can flexibly approximate arbitrary functional forms. Experiments on artificial and real-world datasets show how taking into account the limiting effect of supply on demand is essential in the process of obtaining an unbiased predictive model of user demand behavior.
机译:运输需求高度依赖于供应,特别是对于可用性经常有限的共享运输服务。由于观察到的需求不能高于可用的供应,历史传输数据通常代表偏见或审查,版本的真正潜在的需求模式。如果没有明确核对这种固有的区别,需求的预测模型必然代表一个真正需求的偏见版本,从而减少有效地预测服务用户的需求。为了解决这个问题,我们提出了一种关于审查感知需求建模的一般方法,我们得出了能够处理时变电源的审查的概念功能。我们通过在高斯过程模型中结合截取的可能性来将该方法应用于共享移动需求预测的任务,这可以灵活地近似任意函数形式。人工和现实世界数据集的实验表明,考虑到提供需求的限制效果在获得用户需求行为的无偏见预测模型的过程中是必不可少的。

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