The question we address is how robust solutions react to changes in the uncertainty set. We prove the location of robust solutions with respect to the magnitude of a possible decrease in uncertainty, namely when the uncertainty set shrinks, and convergence of the sequence of robust solutions.In decision making, uncertainty may arise from incomplete information about people’s (stakeholders, voters, opinion leaders, etc.) perception about a specific issue. Whether the decision maker (DM) has to look for the approval of a board or pass an act, they might need to define the strategy that displeases the minority. In such a problem, the feasible region is likely to unchanged, while uncertainty affects the objective function. Hence the paper studi...
Although robust optimization is a powerful technique in dealing with uncertainty in optimization, it...
In this paper we consider uncertain scalar optimization problems with infinite scenario sets. We app...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...
Recent advances in decision making have incorporated both risk and ambiguity in decision theory and ...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
In many real-world optimization problems, a solution cannot be realized in practice exactly as compu...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
In practical optimization problems, uncertainty in parameter values is often present. This uncertain...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
We consider constraint optimization problems where costs (or preferences) are all given, but some ar...
Decision making formulated as finding a strategy that maximizes a utility function de-pends critical...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
Although robust optimization is a powerful technique in dealing with uncertainty in optimization, it...
In this paper we consider uncertain scalar optimization problems with infinite scenario sets. We app...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...
Recent advances in decision making have incorporated both risk and ambiguity in decision theory and ...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
In many real-world optimization problems, a solution cannot be realized in practice exactly as compu...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
In practical optimization problems, uncertainty in parameter values is often present. This uncertain...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
We consider constraint optimization problems where costs (or preferences) are all given, but some ar...
Decision making formulated as finding a strategy that maximizes a utility function de-pends critical...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
Although robust optimization is a powerful technique in dealing with uncertainty in optimization, it...
In this paper we consider uncertain scalar optimization problems with infinite scenario sets. We app...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...