Recent research shows that enlarging the arity of recombination operators in a Genetic Algorithm lowers the probability of premature convergence. This results in more robust genetic function optimizers. In this paper we try to give an explanation why these multi-parent operators are better. In particular, we discuss two operators: the uniform scanning crossover and the diagonal crossover operator. First we show that these operators are better than the standard ones by testing them on an extensive test-suite of function optimization problems. Second, we explain the empirical results by first looking at the influence that the operators have on the evolution of populations, and then by using a new kind of description we are able to explain the...
In this paper we report the results of experiments on multi-parent reproduction in an adaptive genet...
Abstract(i) We investigate spectral and geometric properties of the mutation-crossover operator in a...
ABSTRACT Genetic Algorithms (GAs) are a set of local search algorithms that are based on principles ...
Abstract — This paper presents a Markov model for the conver-gence of multi-parent genetic algorithm...
Evolutionary algorithms (EAs) are increasingly popular approaches to multi-objective optimization. O...
Holland's analysis of the sources of power of genetic algorithms has served as guidance for the...
Crossover is the main genetic operator which influences the power of evolutionary algorithms. Among...
In this paper we describe an efficient approach for multimodal function optimization using Genetic A...
Genetic algorithms (GA) are stimulated by population genetics and evolution at the population level ...
Traditionally, genetic algorithms have relied upon 1 and 2-point crossover operators. Many recent em...
Maintaining population diversity throughout generations of Genetic Algorithms (GAs) is key to avoid ...
The dynamic behavior of mutation and crossover is investigated with the Breeder Genetic Algorithm. T...
In this paper we describe an efficient approach for multimodal function optimization using genetic a...
The time evolution of a simple model for crossover is discussed. A variant of this model with an imp...
Genetic Algorithms is a population-based optimization strategy that has been successfully applied to...
In this paper we report the results of experiments on multi-parent reproduction in an adaptive genet...
Abstract(i) We investigate spectral and geometric properties of the mutation-crossover operator in a...
ABSTRACT Genetic Algorithms (GAs) are a set of local search algorithms that are based on principles ...
Abstract — This paper presents a Markov model for the conver-gence of multi-parent genetic algorithm...
Evolutionary algorithms (EAs) are increasingly popular approaches to multi-objective optimization. O...
Holland's analysis of the sources of power of genetic algorithms has served as guidance for the...
Crossover is the main genetic operator which influences the power of evolutionary algorithms. Among...
In this paper we describe an efficient approach for multimodal function optimization using Genetic A...
Genetic algorithms (GA) are stimulated by population genetics and evolution at the population level ...
Traditionally, genetic algorithms have relied upon 1 and 2-point crossover operators. Many recent em...
Maintaining population diversity throughout generations of Genetic Algorithms (GAs) is key to avoid ...
The dynamic behavior of mutation and crossover is investigated with the Breeder Genetic Algorithm. T...
In this paper we describe an efficient approach for multimodal function optimization using genetic a...
The time evolution of a simple model for crossover is discussed. A variant of this model with an imp...
Genetic Algorithms is a population-based optimization strategy that has been successfully applied to...
In this paper we report the results of experiments on multi-parent reproduction in an adaptive genet...
Abstract(i) We investigate spectral and geometric properties of the mutation-crossover operator in a...
ABSTRACT Genetic Algorithms (GAs) are a set of local search algorithms that are based on principles ...