Abstract The first systematic evaluation of the effects of six existing forms of fitness scaling in genetic algorithms is presented alongside a new method called transform ranking. Each method has been applied to stochastic universal sampling (SUS) over a fixed number of generations. The test functions chosen were the two-dimensional Schwefel and Griewank functions. The quality of the solution was improved by applying sigma scaling, linear rank scaling, nonlinear rank scaling, probabilistic nonlinear rank scaling, and transform ranking. However, this benefit was always at a computational cost. Generic linear scaling and Boltzmann scaling were each of benefit in one fitness landscape but not the other. A new fitness scaling function, transfo...
Genetic Algorithms (GAs) are a popular and robust strategy for optimisation problems. However, these...
(CRS4EAs) is a novel method for comparing evolutionary al-gorithms which evaluates and ranks algorit...
Starting from some simple observations on a popular selection method in Evolutionary Algorithms (EAs...
The first systematic evaluation of the effects of six existing forms of fitness scaling in genetic a...
During the evolution procedure of GA, the fitness distribution of population is always unforeseeable...
There is a rife problem of premature convergence to local optimum in genetic algorithms. One of feas...
Proportional selection (PS), as a selection mechanism for mating (reproduction with emphasis), selec...
A novel method of individual level adaptive mutation rate control called the rank-scaled mutation ra...
A formalism for modelling the dynamics of genetic algorithms using methods from statistical physics,...
Genetic algorithms are integral to a range of applications. They utilise Darwin’s theory of evolutio...
International audienceThis article presents a newly proposed selection process for genetic algorithm...
Fitness sharing has been used widely in genetic algorithms for multi-objective function optimization...
Abstract(i) We investigate spectral and geometric properties of the mutation-crossover operator in a...
Genetic Programming is applied to the task of evolving general iterative sorting algorithms. A conne...
International audienceWe study the simple genetic algorithm with a ranking selection mechanism (line...
Genetic Algorithms (GAs) are a popular and robust strategy for optimisation problems. However, these...
(CRS4EAs) is a novel method for comparing evolutionary al-gorithms which evaluates and ranks algorit...
Starting from some simple observations on a popular selection method in Evolutionary Algorithms (EAs...
The first systematic evaluation of the effects of six existing forms of fitness scaling in genetic a...
During the evolution procedure of GA, the fitness distribution of population is always unforeseeable...
There is a rife problem of premature convergence to local optimum in genetic algorithms. One of feas...
Proportional selection (PS), as a selection mechanism for mating (reproduction with emphasis), selec...
A novel method of individual level adaptive mutation rate control called the rank-scaled mutation ra...
A formalism for modelling the dynamics of genetic algorithms using methods from statistical physics,...
Genetic algorithms are integral to a range of applications. They utilise Darwin’s theory of evolutio...
International audienceThis article presents a newly proposed selection process for genetic algorithm...
Fitness sharing has been used widely in genetic algorithms for multi-objective function optimization...
Abstract(i) We investigate spectral and geometric properties of the mutation-crossover operator in a...
Genetic Programming is applied to the task of evolving general iterative sorting algorithms. A conne...
International audienceWe study the simple genetic algorithm with a ranking selection mechanism (line...
Genetic Algorithms (GAs) are a popular and robust strategy for optimisation problems. However, these...
(CRS4EAs) is a novel method for comparing evolutionary al-gorithms which evaluates and ranks algorit...
Starting from some simple observations on a popular selection method in Evolutionary Algorithms (EAs...