International audienceThere are numerous many-objective real-world problems in various application domains for which it is difficult or time-consuming to derive Pareto optimal solutions. In an evolutionary algorithm, variation operators such as recombination and mutation are extremely important to obtain an effective solution search. In this paper, we study a machine learning-enhanced recombination that incorporates an intelligent variable selection method. The method is based on the importance of variables with respect to convergence to the Pareto front. We verify the performance of the enhanced recombination on benchmark test problems with three or more objectives using the many-objective evolutionary algorithm AϵSϵH as a baseline algorit...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
This paper addresses the problem of controlling mutation strength in multi-objective evolutionary al...
In this paper, by constructing the Multi-objective Gene-pool Optimal Mixing Evolutionary Algorithm (...
International audienceIn evolutionary multi-objective optimization, variation operators are cruciall...
Evolutionary algorithms (EAs) are increasingly popular approaches to multi-objective optimization. O...
This empirical inquiry explores the behaviour of a particular class of evolutionary algorithms as th...
This paper adresses the problem of diversity in multiobjective evolutionary algorithms and its impli...
International audienceThis paper proposes a new multi-objective genetic algorithm, called GAME, to s...
International audienceThis work studies the behavior of three elitist multi- and many-objective evol...
While Pareto-based multiobjective optimization algorithms continue to show effectiveness for a wide ...
In this paper, the interest is on cases where assessing the goodness of a solution for the problem i...
Preprint - unpublishedIn evolutionary multi-objective optimization, effectiveness refers to how an e...
Abstract: Multi-objective EAs (MOEAs) are well established population-based techniques for solving v...
This paper investigates the influence of recombination and self-adaptation in real-encoded Multi-Obj...
Previous work on multiobjective genetic algorithms has been focused on preventing genetic drift and ...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
This paper addresses the problem of controlling mutation strength in multi-objective evolutionary al...
In this paper, by constructing the Multi-objective Gene-pool Optimal Mixing Evolutionary Algorithm (...
International audienceIn evolutionary multi-objective optimization, variation operators are cruciall...
Evolutionary algorithms (EAs) are increasingly popular approaches to multi-objective optimization. O...
This empirical inquiry explores the behaviour of a particular class of evolutionary algorithms as th...
This paper adresses the problem of diversity in multiobjective evolutionary algorithms and its impli...
International audienceThis paper proposes a new multi-objective genetic algorithm, called GAME, to s...
International audienceThis work studies the behavior of three elitist multi- and many-objective evol...
While Pareto-based multiobjective optimization algorithms continue to show effectiveness for a wide ...
In this paper, the interest is on cases where assessing the goodness of a solution for the problem i...
Preprint - unpublishedIn evolutionary multi-objective optimization, effectiveness refers to how an e...
Abstract: Multi-objective EAs (MOEAs) are well established population-based techniques for solving v...
This paper investigates the influence of recombination and self-adaptation in real-encoded Multi-Obj...
Previous work on multiobjective genetic algorithms has been focused on preventing genetic drift and ...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
This paper addresses the problem of controlling mutation strength in multi-objective evolutionary al...
In this paper, by constructing the Multi-objective Gene-pool Optimal Mixing Evolutionary Algorithm (...