非平稳的报贩:数据驱动的非参数学习

N. B. Keskin, Xu Min, Jing-Sheng Song
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引用次数: 6

摘要

研究了多时段非平稳需求环境下需求分布未知的报贩问题。各时段的需求由时变需求水平和加性随机冲击组成。需求水平和随机冲击都不能单独观察到。在时间范围内需求水平的变化量是通过累积变化度量来度量的。该问题具有广泛的应用,例如在COVID-19之后的易腐库存规划,人员配置和医疗资源容量规划。我们设计了一种非参数动态排序策略,称为移动窗口排序策略,该策略跟踪未知需求水平的变化,同时考虑不可观察的随机需求冲击。为了计算每个时期的订单数量,该策略只需要过去的需求观察,而不需要访问潜在的需求分布。对于有限变化的“预算”,我们证明了我们的排序策略是一阶最优的,因为它的遗憾以最小可能的速率增长。我们还将我们的分析扩展到渐近大变化预算的情况。通过基于现实数据的案例研究,我们表明,与广泛用于易腐品库存补充和护士配备的政策相比,我们的政策可以节省20-80%的超龄和未成年人成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Nonstationary Newsvendor: Data-Driven Nonparametric Learning
We study a newsvendor problem with unknown demand distribution in a nonstationary demand environment over a multi-period time horizon. The demand in each period consists of a time-varying demand level and an additive random shock. Neither the demand level nor the random shock is separately observable. The amount of change in the demand level over the time horizon is measured by a cumulative variation metric. The problem has widespread applications, such as perishable inventory planning, staffing, and medical resource capacity planning in the wake of COVID-19. We design a nonparametric dynamic ordering policy, termed the moving window ordering policy, that tracks the shifts in the unknown demand level while accounting for the unobservable random demand shocks. To compute the order quantity in each period, this policy only needs the past demand observations, without any access to the underlying demand distribution. For a finite variation "budget," we prove that our ordering policy is first-order optimal in the sense that its regret grows at the smallest possible rate. We also extend our analysis to the case of asymptotically large variation budgets. Through case studies based on real-life data, we show that our policy can save 20-80% of overage and underage costs, relative to policies widely used for perishable inventory replenishment and nurse staffing.
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