We propose a novel approach for optimization under uncertainty. Our approach does not assume any particular noise model behind the measurements, and only requires two typical instances. We first propose a measure of similarity of instances (with respect to a given objective). Based on this measure, we then choose a solution randomly among all solutions that are near-optimum for both instances. The exact notion of near-optimum is intertwined with the proposed similarity measure. Our similarity measure also allows us to derive formal statements about the expected quality of the computed solution. Furthermore, we apply our approach to various optimization problems. (C) 2017 The Authors. Published by Elsevier Inc.</p
AbstractThe data of real-world optimization problems are usually uncertain, that is especially true ...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
Abstract. Our goal is to build robust optimization problems for making decisions based on complex da...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
Most optimization problems in real life do not have accurate estimates of the prob-lem parameters at...
Abstract—For many real-world optimization problems, the robustness of a solution is of great importa...
AbstractThe data of real-world optimization problems are usually uncertain, that is especially true ...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
Abstract. Our goal is to build robust optimization problems for making decisions based on complex da...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
Most optimization problems in real life do not have accurate estimates of the prob-lem parameters at...
Abstract—For many real-world optimization problems, the robustness of a solution is of great importa...
AbstractThe data of real-world optimization problems are usually uncertain, that is especially true ...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...