In robust optimization, the general aim is to find a solution that performs well over a set of possible parameter outcomes, the so-called uncertainty set. In this paper, we assume that the uncertainty size is not fixed, and instead aim at finding a set of robust solutions that covers all possible uncertainty set outcomes. We refer to these problems as robust optimization with variable-sized uncertainty. We discuss how to construct smallest possible sets of min–max robust solutions and give bounds on their size. A special case of this perspective is to analyze for which uncertainty sets a nominal solution ceases to be a robust solution, which amounts to an inverse robust optimization problem. We consider this problem with a min–max regret ob...
In real-world applications of optimization, optimal solutions are often of limited value, because di...
Given an observation of a decision-maker’s uncertain behavior, we develop a robust inverse optimizat...
In this paper we examine multi-objective linear programming problems in the face of data uncertainty...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
Robust optimization is proving to be a fruitful tool to study problems with uncertain data. In this ...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
We develop a general methodology for deriving probabilistic guarantees for solutions of robust optim...
In robust optimization, the uncertainty set is used to model all possible outcomes of uncertain para...
The multiobjective optimization model studied in this paper deals with simultaneous minimization of ...
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...
Whenever values of decision variables can not be put into practice exactly, we en-counter variable u...
In this paper, we study a method for finding robust solutions to multiobjective optimization problem...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
In real-world applications of optimization, optimal solutions are often of limited value, because di...
Given an observation of a decision-maker’s uncertain behavior, we develop a robust inverse optimizat...
In this paper we examine multi-objective linear programming problems in the face of data uncertainty...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
In classic robust optimization, it is assumed that a set of possible parameter realizations, the unc...
Robust optimization is proving to be a fruitful tool to study problems with uncertain data. In this ...
Many combinatorial optimization problems arising in real-world applications do not have accurate est...
We develop a general methodology for deriving probabilistic guarantees for solutions of robust optim...
In robust optimization, the uncertainty set is used to model all possible outcomes of uncertain para...
The multiobjective optimization model studied in this paper deals with simultaneous minimization of ...
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...
Whenever values of decision variables can not be put into practice exactly, we en-counter variable u...
In this paper, we study a method for finding robust solutions to multiobjective optimization problem...
Robust optimization is a valuable alternative to stochastic programming, where all underlying probab...
In real-world applications of optimization, optimal solutions are often of limited value, because di...
Given an observation of a decision-maker’s uncertain behavior, we develop a robust inverse optimizat...
In this paper we examine multi-objective linear programming problems in the face of data uncertainty...