Adjustable Distributionally Robust Optimization with Infinitely Constrained Ambiguity Sets

Haolin Ruan, Zhi Chen, Chin Pang Ho*

*Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

2 Citations (Scopus)

Abstract

We study adjustable distributionally robust optimization problems, where their ambiguity sets can potentially encompass an infinite number of expectation constraints. Although such ambiguity sets have great modeling flexibility in characterizing uncertain probability distributions, the corresponding adjustable problems remain computationally intractable and challenging. To overcome this issue, we propose a greedy improvement procedure that consists of solving, via the (extended) linear decision rule approximation, a sequence of tractable subproblems—each of which considers a relaxed and finitely constrained ambiguity set that can be iteratively tightened to the infinitely constrained one. Through three numerical studies of adjustable distributionally robust optimization models, we show that our approach can yield improved solutions in a systematic way for both two-stage and multistage problems. © 2023 INFORMS
Original languageEnglish
Pages (from-to)1002–1023
JournalINFORMS Journal on Computing
Volume35
Issue number5
Online published12 Apr 2023
DOIs
Publication statusPublished - Sept 2023

Funding

Financial support by the Early Career Scheme from the Hong Kong Research Grants Council [Project No. CityU 21502820], the CityU Start-Up Grant [Project No. 9610481], the CityU Strategic Research Grant [Project No. 7005688], the National Natural Science Foundation of China [Project No. 72032005], and Chow Sang Sang Group Research Fund sponsored by Chow Sang Sang Hold-ings International Limited [Project No. 9229076] is gratefully acknowledged.

Research Keywords

  • adjustable optimization
  • distributionally robust optimization
  • infinitely constrained ambiguity set
  • linear decision rule

RGC Funding Information

  • RGC-funded

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