Multi-objective optimization problems are often subject to the presence of objectives that require expensive resampling for their computation. This is the case for many robustness metrics, which are frequently used as an additional objective that accounts for the reliability of specific sections of the solution space. Typical robustness measurements use resampling, but the number of samples that constitute a precise dispersion measure has a potentially large impact on the computational cost of an algorithm. This article proposes the integration of dominance based statistical testing methods as part of the selection mechanism of evolutionary multi-objective genetic algorithms with the aim of reducing the number of fitness evaluations. The pe...
The final publication is available at Springer via http://dx.doi.org/10.1007/978-3-319-15892-1_128th...
This paper presents a multiobjective evolutionary algorithm (MOEA) capable of handling stochastic ob...
Many real-world optimisation problems approached by evolutionary algorithms are subject to noise. Wh...
Multi-objective optimization problems are often subject to the presence of objectives that require e...
This work discusses robustness assessment during multi-objective optimization with a Multi-Objective...
Jin Y, Sendhoff B. Trade-Off between Performance and Robustness: An Evolutionary Multiobjective Appr...
This paper presents a new approach to robustness analysis in multi-objective optimization problems a...
In real-world applications, it is often desired that a solution is not only of high performance, but...
Published online: 26 October 2013This paper presents a new approach to robustness analysis in multi-...
In Multi-objective Optimization many solutions have to be evaluated in order to provide the decision...
Liu J, Liu Y, Jin Y, Li F. A Decision Variable Assortment-Based Evolutionary Algorithm for Dominance...
Most real-world optimization problems behave stochastically. Evolutionary optimization algorithms ha...
Abstract: Multi-objective EAs (MOEAs) are well established population-based techniques for solving v...
In optimization studies including multi-objective optimization, the main focus is placed on finding ...
Many real-world optimisation problems approached by evolutionary algorithms are subject to noise. Wh...
The final publication is available at Springer via http://dx.doi.org/10.1007/978-3-319-15892-1_128th...
This paper presents a multiobjective evolutionary algorithm (MOEA) capable of handling stochastic ob...
Many real-world optimisation problems approached by evolutionary algorithms are subject to noise. Wh...
Multi-objective optimization problems are often subject to the presence of objectives that require e...
This work discusses robustness assessment during multi-objective optimization with a Multi-Objective...
Jin Y, Sendhoff B. Trade-Off between Performance and Robustness: An Evolutionary Multiobjective Appr...
This paper presents a new approach to robustness analysis in multi-objective optimization problems a...
In real-world applications, it is often desired that a solution is not only of high performance, but...
Published online: 26 October 2013This paper presents a new approach to robustness analysis in multi-...
In Multi-objective Optimization many solutions have to be evaluated in order to provide the decision...
Liu J, Liu Y, Jin Y, Li F. A Decision Variable Assortment-Based Evolutionary Algorithm for Dominance...
Most real-world optimization problems behave stochastically. Evolutionary optimization algorithms ha...
Abstract: Multi-objective EAs (MOEAs) are well established population-based techniques for solving v...
In optimization studies including multi-objective optimization, the main focus is placed on finding ...
Many real-world optimisation problems approached by evolutionary algorithms are subject to noise. Wh...
The final publication is available at Springer via http://dx.doi.org/10.1007/978-3-319-15892-1_128th...
This paper presents a multiobjective evolutionary algorithm (MOEA) capable of handling stochastic ob...
Many real-world optimisation problems approached by evolutionary algorithms are subject to noise. Wh...