In general, biologically-inspired multi-objective optimization algorithms comprise several parameters which values have to be selected ahead of running the algorithm. In this paper we describe a global sensitivity analysis framework that enables a better understanding of the effects of parameters on algorithm performance. For this work, we tested NSGA-III and MOEA/D on multi-objective optimization testbeds, undertaking our proposed sensitivity analysis techniques on the relevant metrics, namely Generational Distance, Inverted Generational Distance, and Hypervolume. Experimental results show that both algorithms are most sensitive to the cardinality of the population. In all analyses, two clusters of parameter usually appear: (1) the populat...
Niche Genetic Algorithms (NGA) are a special category of Genetic Algorithms (GA) that solve problems...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
In this study, we provide a new taxonomy of parameters of genetic algorithms (GA), structural and nu...
In general, biologically-inspired multi-objective optimization algorithms comprise several parameter...
We present a comprehensive global sensitivity analysis of two single-objective and two multi-objecti...
Evolutionary Algorithms (EAs) and other metaheuristics are greatly affected by the choice of their p...
Research on multi-objective evolutionary algorithms (MOEAs) has produced over the past decades a lar...
It is now well established that more than one performance metrics are necessary for evaluating a mul...
It is now well established that more than one performance metrics are necessary for evaluating a mul...
International audienceOffline parameter tuning (OPT) of multi-objective evolutionary algorithms (MOE...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
AbstractWhen Genetic Algorithms (GA) are used to solve layout problems, the solution quality may be ...
International audienceThis paper describes a statistical method that helps to find good parameter se...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
Niche Genetic Algorithms (NGA) are a special category of Genetic Algorithms (GA) that solve problems...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
In this study, we provide a new taxonomy of parameters of genetic algorithms (GA), structural and nu...
In general, biologically-inspired multi-objective optimization algorithms comprise several parameter...
We present a comprehensive global sensitivity analysis of two single-objective and two multi-objecti...
Evolutionary Algorithms (EAs) and other metaheuristics are greatly affected by the choice of their p...
Research on multi-objective evolutionary algorithms (MOEAs) has produced over the past decades a lar...
It is now well established that more than one performance metrics are necessary for evaluating a mul...
It is now well established that more than one performance metrics are necessary for evaluating a mul...
International audienceOffline parameter tuning (OPT) of multi-objective evolutionary algorithms (MOE...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
AbstractWhen Genetic Algorithms (GA) are used to solve layout problems, the solution quality may be ...
International audienceThis paper describes a statistical method that helps to find good parameter se...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
Niche Genetic Algorithms (NGA) are a special category of Genetic Algorithms (GA) that solve problems...
Most preference-based multi-objective evolutionary algorithms use reference points to articulate the...
In this study, we provide a new taxonomy of parameters of genetic algorithms (GA), structural and nu...