Learning Newsvendor Problems With Intertemporal Dependence and Moderate Non-stationarities

Author:

Qi Meng1,Shen Zuo-Jun(Max)2ORCID,Zheng Zeyu3

Affiliation:

1. SC Johnson College of Business, Cornell University, Ithaca, NY, USA

2. Faculty of Engineering & Faculty of Business and Economics, University of Hong Kong, Hong Kong

3. Department of Industrial Engineering and Operations Research, University of California Berkeley, Berkeley, CA, USA

Abstract

This work provides performance guarantees for solving data-driven contextual newsvendor problems when the contextual data contains intertemporal dependence and non-stationarities. While machine learning tools have observed increasing use in data-driven inventory management problems, most of the existing work assumes that the contextual data are independent and identically distributed (often referred to as i.i.d.). However, such assumptions are often violated in real operational environments where the contextual data are sequentially generated with intertemporal correlations and possible non-stationarities. By accommodating these naturally arising operational environments, our work adopts comparatively more realistic assumptions and develops out-of-sample performance bounds for learning data-driven contextual newsvendor problems.

Publisher

SAGE Publications

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