Robust optimization is proving to be a fruitful tool to study problems with uncertain data. In this paper we deal with the minmax aproach to robust multiobjective optimization. We survey the main features of this problem with particular reference to results concerning linear scalarization and sensitivity of optimal values with respect to changes in the uncertainty set. Furthermore we prove results concerning sensitivity of optimal solutions with respect to changes in the uncertainty set. Finally we apply the presented results to mean-variance portfolio optimization
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...
Many real-world decision problems in engineering and management have uncertain parameters. Robust op...
Many financial optimization problems involve future values of security prices, interest rates and ex...
Robust optimization is proving to be a fruitful tool to study problems with uncertain data. In this ...
In this paper, we discuss some of the concepts of robustness for uncertain multi-objective optimizat...
Multiobjective optimization problems (MOPs) are problems with two or more objective functions. Two t...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...
In real-world applications of optimization, optimal solutions are often of limited value, because di...
Considering mean-variance portfolio problems with uncertain model parameters, we contrast the classi...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
Several robustness concepts for multi-objective uncertain optimization have been developed during th...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
The Markowitz mean-variance portfolio optimization is a well known and also widely used investment t...
In many real-world optimization problems, a solution cannot be realized in practice exactly as compu...
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...
Many real-world decision problems in engineering and management have uncertain parameters. Robust op...
Many financial optimization problems involve future values of security prices, interest rates and ex...
Robust optimization is proving to be a fruitful tool to study problems with uncertain data. In this ...
In this paper, we discuss some of the concepts of robustness for uncertain multi-objective optimizat...
Multiobjective optimization problems (MOPs) are problems with two or more objective functions. Two t...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
The question we address is how robust solutions react to changes in the uncertainty set. We prove th...
In real-world applications of optimization, optimal solutions are often of limited value, because di...
Considering mean-variance portfolio problems with uncertain model parameters, we contrast the classi...
A robust optimization has emerged as a powerful tool for managing un- certainty in many optimization...
Several robustness concepts for multi-objective uncertain optimization have been developed during th...
In robust optimization, the general aim is to find a solution that performs well over a set of possi...
The Markowitz mean-variance portfolio optimization is a well known and also widely used investment t...
In many real-world optimization problems, a solution cannot be realized in practice exactly as compu...
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...
Many real-world decision problems in engineering and management have uncertain parameters. Robust op...
Many financial optimization problems involve future values of security prices, interest rates and ex...