Article ID Journal Published Year Pages File Type
7543437 Discrete Optimization 2018 15 Pages PDF
Abstract
We consider combinatorial optimization problems with uncertain linear objective functions. In the min-max-min robust optimization approach, a fixed number k of feasible solutions is computed such that the respective best of them is optimal in the worst case. The idea is to calculate the set of candidate solutions in a potentially expensive preprocessing phase and then select the best solution out of this set in real-time, once the actual scenario is known. In this paper, we investigate the complexity of the resulting min-max-min problem in the case of discrete uncertainty, as well as its connection to the classical min-max robust counterpart, for many classical combinatorial optimization problems. Essentially, it turns out that the min-max-min problem is not harder to solve than the min-max problem, while producing much better solutions in general for larger k. In particular, this approach may mitigate the so-called price of robustness, making it an attractive alternative to the classical robust optimization approach in many practical applications.
Related Topics
Physical Sciences and Engineering Mathematics Control and Optimization
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