English

Two-Stage Robust Optimization Problems with Two-Stage Uncertainty

Optimization and Control 2022-01-03 v3 Discrete Mathematics Data Structures and Algorithms

Abstract

We consider two-stage robust optimization problems, which can be seen as games between a decision maker and an adversary. After the decision maker fixes part of the solution, the adversary chooses a scenario from a specified uncertainty set. Afterwards, the decision maker can react to this scenario by completing the partial first-stage solution to a full solution. We extend this classic setting by adding another adversary stage after the second decision-maker stage, which results in min-max-min-max problems, thus pushing two-stage settings further towards more general multi-stage problems. We focus on budgeted uncertainty sets and consider both the continuous and discrete case. For the former, we show that a wide range of robust combinatorial optimization problems can be decomposed into polynomially many subproblems, which can be solved in polynomial time for example in the case of (\textsc{representative}) \textsc{selection}. For the latter, we prove NP-hardness for a wide range of problems, but note that the special case where first- and second-stage adversarial costs are equal can remain solvable in polynomial time.

Keywords

Cite

@article{arxiv.2104.03043,
  title  = {Two-Stage Robust Optimization Problems with Two-Stage Uncertainty},
  author = {Marc Goerigk and Stefan Lendl and Lasse Wulf},
  journal= {arXiv preprint arXiv:2104.03043},
  year   = {2022}
}