Error Propagation in Asymptotic Analysis of the Data-Driven (s, S) Inventory Policy
成果类型:
Article
署名作者:
Zhang, Xun; Ye, Zhi-Sheng; Haskell, William B.
署名单位:
Southern University of Science & Technology; National University of Singapore; Purdue University System; Purdue University
刊物名称:
OPERATIONS RESEARCH
ISSN/ISSBN:
0030-364X
DOI:
10.1287/opre.2020.0568
发表日期:
2025
关键词:
censored demand
newsvendor
optimality
models
heuristics
systems
bounds
摘要:
We study periodic review stochastic inventory control in the data-driven setting where the retailer makes ordering decisions based only on historical demand observations without any knowledge of the probability distribution of the demand. Because an (s, S)policy is optimal when the demand distribution is known, we investigate the statistical properties of the data-driven (s, S)-policy obtained by recursively computing the empirical cost-to-go functions. This policy is inherently challenging to analyze because the recursion induces propagation of the estimation error backward in time. In this work, we establish the asymptotic properties of this data-driven policy by fully accounting for the error propagation. In this setting, the empirical cost-to-go functions for the estimated parameters are not i.i.d. sums because of the error propagation. Our main methodological innovation comes from an asymptotic representation for multi-sample U-processes in terms of i.i.d. sums. This representation enables us to apply empirical process theory to derive the influence functions of the estimated parameters and to establish joint asymptotic normality. Based on these results, we also propose an entirely data-driven estimator of the optimal expected cost, and we derive its asymptotic distribution. We demonstrate some useful applications of our asymptotic results, including sample size determination and interval estimation.
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