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Reducing Car-Sharing Relocation Cost through Non-Parametric Density Estimation and Stochastic Programming

机译:通过非参数估计和随机编程降低汽车共享重定位成本

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In this paper, we present a data-driven stochastic programming model for reducing car-sharing relocation cost under uncertain customer demands. Instead of using parametric methods to estimate demand probability distributions, we propose an integration of non-parametric kernel density estimation, sample average approximation and a two-stage stochastic programming model. The proposed approach computes high quality car-sharing relocation solutions by better leveraging the information provided by large-scale historical data. To validate the performance of the proposed approach, we conduct numerical experiments using the New York taxi trip data sets. Our results show that the proposed approach outperforms the parametric approach using Laplace and Poisson distributions and the deterministic model in terms of profit and combined holding and relocation costs. Most importantly, it reduces on average more than 50% of relocation rate compared with the parametric method and 67% of relocation rate compared with the deterministic model.
机译:在本文中,我们提出了一种数据驱动的随机编程模型,用于降低不确定的客户需求下的汽车共享搬迁成本。不使用参数方法来估计需求概率分布,而是提出了非参数核密度估计,样本平均近似和两级随机编程模型的集成。所提出的方法通过更好地利用由大规模历史数据提供的信息来计算高质量的汽车共享重定位解决方案。为了验证所提出的方法的性能,我们使用纽约出租车旅行数据集进行数值实验。我们的研究结果表明,拟议的方法优于使用LAPLACE和泊松分布和确定性模型在利润和结合持有和搬迁成本方面的参数化方法。最重要的是,与参数方法相比,它与搬迁率的平均值降低了超过50%,与确定性模型相比,搬迁率的67%。

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