2024
DOI: 10.1287/ijoc.2022.0086
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Adjustable Robust Optimization with Discrete Uncertainty

Henri Lefebvre,
Enrico Malaguti,
Michele Monaci

Abstract: In this paper, we study adjustable robust optimization (ARO) problems with discrete uncertainty. Under a very general modeling framework, we show that such two-stage robust problems can be exactly reformulated as ARO problems with objective uncertainty only. This reformulation is valid with and without the fixed recourse assumption and is not limited to continuous wait-and-see decision variables unlike most of the existing literature. Additionally, we extend an enumerative algorithm akin to a branch-and-cut sc… Show more

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