As a new promising crossover method, multiple crossovers per couple (MCPC) deserves special attention in evolutionary computing field. Allowing multiple crossovers per couple on a selected pair of parents provided an extra benefit in processing time and similar quality of solutions when contrasted against the conventional single crossover per couple approach (SCPC). These results, were confirmed when optimising classic testing functions and harder (non-linear, non-separable) functions. Despite these benefits, due to a reinforcement of selective pressure, MCPC showed in some cases an undesirable premature convergence effect. In order to face this problem, the present paper attempts to control the number of crossovers, and offspring, allow...
Self-adaptation is an essential feature of natural evolution. However, in the context of function op...
Okabe T, Jin Y, Sendhoff B. Combination of Genetic Algorithms and Evolution Strategies with Self-ada...
In this paper we introduce a new generic selection method for Genetic Algorithms. The main differenc...
As a new promising crossover method, multiple crossovers per couple (MCPC) deserves special attentio...
Multiple crossover per couple (MCPC) is a newly introduced crossover method which in contrast with t...
Genetic algorithms (GAs) are stochastic adaptive algorithms whose search method is based on simulati...
The aItemative proposed and known as MCPC [6] has improved the perfonnance of the original Holland's...
Contrasting with conventional approaches to crossover, Multiple Crossover Per Couple (MCPC) is an al...
Evolutionary Algorithms are search algorithms based on the Darwinian metaphor of “Natural Selection”...
. It has long been recognised that the choice of recombination and mutation operators and the rates ...
One of the issues in evolutionary algorithms (EAs) is the relative importance of two search operator...
In the context of function optimization, selfadaptation features of evolutionary search algorithms h...
Genetic algorithms typically use crossover, which relies onmating a set of selected par-ents. As par...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
Self-adaptation is an essential feature of natural evolution. However, in the context of function op...
Self-adaptation is an essential feature of natural evolution. However, in the context of function op...
Okabe T, Jin Y, Sendhoff B. Combination of Genetic Algorithms and Evolution Strategies with Self-ada...
In this paper we introduce a new generic selection method for Genetic Algorithms. The main differenc...
As a new promising crossover method, multiple crossovers per couple (MCPC) deserves special attentio...
Multiple crossover per couple (MCPC) is a newly introduced crossover method which in contrast with t...
Genetic algorithms (GAs) are stochastic adaptive algorithms whose search method is based on simulati...
The aItemative proposed and known as MCPC [6] has improved the perfonnance of the original Holland's...
Contrasting with conventional approaches to crossover, Multiple Crossover Per Couple (MCPC) is an al...
Evolutionary Algorithms are search algorithms based on the Darwinian metaphor of “Natural Selection”...
. It has long been recognised that the choice of recombination and mutation operators and the rates ...
One of the issues in evolutionary algorithms (EAs) is the relative importance of two search operator...
In the context of function optimization, selfadaptation features of evolutionary search algorithms h...
Genetic algorithms typically use crossover, which relies onmating a set of selected par-ents. As par...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
Self-adaptation is an essential feature of natural evolution. However, in the context of function op...
Self-adaptation is an essential feature of natural evolution. However, in the context of function op...
Okabe T, Jin Y, Sendhoff B. Combination of Genetic Algorithms and Evolution Strategies with Self-ada...
In this paper we introduce a new generic selection method for Genetic Algorithms. The main differenc...