For multiobjective optimization problems with uncertain parameters in the objective functions, different variants of minmax robustness concepts have been defined in the literature. The idea of minmax robustness is to optimize in the worst case such that the solutions have the best objective function values even when the worst case happens. However, the computation of the minmax robust Pareto optimal solutions remains challenging. This paper proposes a simple indicator based evolutionary algorithm for robustness (SIBEA-R) to address this challenge by computing a set of non-dominated set-based minmax robust solutions. In SIBEA-R, we consider the set of objective function values in the worst case of each solution. We propose a set-ba...
In this paper, we introduce the MuRO-NIMBUS method for solving multiobjective optimization problems ...
The paper presents a simple memetic algorithm for the solution of min-max problems. It will be shown...
Subset selection, which aims to select a subset from a ground set to maximize some objective functio...
Min-max and min-min robustness are two extreme approaches discussed for single-objective robust opti...
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...
In this paper, we study a method for finding robust solutions to multiobjective optimization problem...
In real-world applications of optimization, optimal solutions are often of limited value, because di...
In real-world applications, it is often desired that a solution is not only of high performance, but...
Liu J, Liu Y, Jin Y, Li F. A Decision Variable Assortment-Based Evolutionary Algorithm for Dominance...
Jin Y, Sendhoff B. Trade-Off between Performance and Robustness: An Evolutionary Multiobjective Appr...
Multiobjective optimization problems (MOPs) are problems with two or more objective functions. Two t...
This work discusses robustness assessment during multi-objective optimization with a Multi-Objective...
Published online: 26 October 2013This paper presents a new approach to robustness analysis in multi-...
This paper presents an evolutionary approach to solve the multi-objective min-max problem (MOMMP) th...
Whenever values of decision variables can not be put into practice exactly, we en-counter variable u...
In this paper, we introduce the MuRO-NIMBUS method for solving multiobjective optimization problems ...
The paper presents a simple memetic algorithm for the solution of min-max problems. It will be shown...
Subset selection, which aims to select a subset from a ground set to maximize some objective functio...
Min-max and min-min robustness are two extreme approaches discussed for single-objective robust opti...
Practical optimization problems usually have multiple objectives, and they also involve uncertainty...
In this paper, we study a method for finding robust solutions to multiobjective optimization problem...
In real-world applications of optimization, optimal solutions are often of limited value, because di...
In real-world applications, it is often desired that a solution is not only of high performance, but...
Liu J, Liu Y, Jin Y, Li F. A Decision Variable Assortment-Based Evolutionary Algorithm for Dominance...
Jin Y, Sendhoff B. Trade-Off between Performance and Robustness: An Evolutionary Multiobjective Appr...
Multiobjective optimization problems (MOPs) are problems with two or more objective functions. Two t...
This work discusses robustness assessment during multi-objective optimization with a Multi-Objective...
Published online: 26 October 2013This paper presents a new approach to robustness analysis in multi-...
This paper presents an evolutionary approach to solve the multi-objective min-max problem (MOMMP) th...
Whenever values of decision variables can not be put into practice exactly, we en-counter variable u...
In this paper, we introduce the MuRO-NIMBUS method for solving multiobjective optimization problems ...
The paper presents a simple memetic algorithm for the solution of min-max problems. It will be shown...
Subset selection, which aims to select a subset from a ground set to maximize some objective functio...