Regret in the Newsvendor Model with Demand and Yield Randomness

58 Pages Posted: 14 May 2020 Last revised: 24 Jun 2021

See all articles by Zhi Chen

Zhi Chen

Department of Decisions, Operations and Technology, CUHK Business School, The Chinese University of Hong Kong

Weijun Xie

Georgia Institute of Technology

Date Written: April 17, 2020

Abstract

We study the fundamental stochastic newsvendor model that considers both demand and yield randomness. It is usually difficult in practice to describe precisely the joint demand and yield distribution, although partial statistical information and empirical data about this ambiguous distribution are often accessible. We combat the issue of distributional ambiguity by taking a data-driven distributionally robust optimization approach to hedge against all distributions that are sufficiently close to a uniform and discrete distribution of empirical data, where closeness is measured by the type-infinity Wasserstein distance. We adopt the minimax regret decision criterion to assess the optimal order quantity that minimizes the worst-case regret. Several properties about the minimax regret model, including optimality condition, regret bound, and the worst-case distribution, are presented. The optimal order quantity can be determined via an efficient golden section search. We extend the analysis to the Hurwicz criterion model, which generalizes the popular albeit pessimistic maximin model (maximizing the worst-case expected profit) and its (less noticeable) more optimistic counterpart—the maximax model (maximizing the best-case expected profit). Finally, we present numerical comparisons of our data-driven minimax regret model with data-driven models based on the Hurwicz criterion and with a minimax regret model based on partial statistical information on moments.

Keywords: Demand Randomness, Yield Randomness, Minimax Regret, Hurwicz Criterion, Type-Infinity Wasserstein Distance, Data-Driven Decision Making Under Uncertainty

Suggested Citation

Chen, Zhi and Xie, Weijun, Regret in the Newsvendor Model with Demand and Yield Randomness (April 17, 2020). Available at SSRN: https://ssrn.com/abstract=3578532 or http://dx.doi.org/10.2139/ssrn.3578532

Zhi Chen (Contact Author)

Department of Decisions, Operations and Technology, CUHK Business School, The Chinese University of Hong Kong ( email )

Room 952, 9/F, Cheng Yu Tong Building
The Chinese University of Hong Kong, Shatin.
Hong Kong
Hong Kong

Weijun Xie

Georgia Institute of Technology ( email )

Atlanta, GA 30332
United States

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