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Provably Near-Optimal Approximation Schemes for Implicit Stochastic and Sample-Based Dynamic Programs

机译:用于隐式随机和基于样本的动态程序的可透明近乎最佳的近似方案

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In this paper, we address two models of nondeterministic discrete time finite-horizon dynamic programs (DPs): implicit stochastic DPs (the information about the random events is given by value oracles to their cumulative distribution functions) and sample-based DPs (the information about the random events is deduced by drawing random samples). Such data-driven models frequently appear in practice, where the cumulative distribution functions of the underlying random variables are either unavailable or too complicated to work with. In both models, the single-period cost functions are accessed via value oracle calls and assumed to possess either monotone or convex structure. We develop the first near-optimal relative approximation schemes for each of the two models. Applications in stochastic inventory control (that is, several variants of the so-called newsvendor problem) are discussed in detail. Our results are achieved by a combination of Bellman equation calculations, density estimation results, and extensions of the technique of K-approximation sets and functions introduced by Halman et al. (2009) [Halman N, Klabjan D, Mostagir M, Orlin J, Simchi-Levi D (2009) A fully polynomial time approximation scheme for single-item stochastic inventory control with discrete demand.
机译:在本文中,我们解决了两种模式的非季定义离散时间有限地域动态程序(DPS):隐式随机DPS(随机事件的信息由价值oracels给出的累积分布函数)和基于样本的DPS(信息关于随机样本推断出随机事件)。这种数据驱动的模型经常出现在实践中,其中底层随机变量的累积分布函数是不可用的,无法与之合作。在这两个模型中,通过价值Oracle呼叫访问单期成本函数,并假定拥有单调或凸结构。我们开发了两个模型中的每种型号的第一个接近最佳相对近似方案。详细讨论了随机库存控制中的应用程序(即所谓的新闻监督员问题的若干变体)。我们的结果是通过Bellman方程计算,密度估计结果和K近似集技术的延伸来实现的,并通过Halman等人引入的功能的延伸。 (2009)[Halman N,Klabjan D,Mostagir M,Orlin J,Simchi-Levi D(2009)具有离散需求的单项随机库存控制的全多项式时间近似方案。

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