It has long been recognized that mutation is a key ingredient in genetic algorithms (GAs) and the choice of suitable mutation probability will have a significant effect on the performance of genetic search. In this paper, a statistics-based adaptive non-uniform mutation (SANUM) is presented within which the probability that each gene will subject to mutation is learnt adaptively over time and over the loci. As a search algorithm based on mechanisms abstracted from population genetics, GAs implicitly maintain the statistics about the search space through the population. SANUM explicitly makes use of the statistics information of the allele distribution in each gene locus to adaptively adjust the mutation probability of that locus. To test th...
In this paper, we provided an extension of our previous work on adaptive genetic algorithm [1]. Each...
In this paper we introduce an adaptive, \u27self-contained\u27 genetic algorithm (GA) with steady-st...
process and maintain a population of potential solutions to a given problem. Through the population...
A statistics-based adaptive non-uniform mutation (SANUM) is presented for genetic algorithms (GAs), ...
Copyright @ 2006 ACMIn this paper, a new gene based adaptive mutation scheme is proposed for genetic...
Evolutionary algorithms (EAs) are a class of stochastic search and optimization algorithms that are ...
Evolutionary algorithms (EAs) are a class of stochastic search and optimization algorithms that are ...
Traditionally in Genetic Algorithms, the mutation probability parameter maintains a constant value d...
Traditionally in Genetic Algorithms, the mutation probability parameter maintains a constant value d...
The genetic algorithm (GA) is a meta-heuristic search algorithm based on mechanisms abstracted from ...
Genetic algorithms (GAs) are a class of stochastic optimization methods inspired by the principles o...
Adaptive Genetic Algorithms extend the Standard Gas to use dynamic procedures to apply evolutionary ...
. It has long been recognised that the choice of recombination and mutation operators and the rates ...
Traditionally in Genetic Algorithms, the mutation probability parameter maintains a constant value d...
Abstract- Bit mutation in genetic algorithms is usually done with a single fixed probability. Method...
In this paper, we provided an extension of our previous work on adaptive genetic algorithm [1]. Each...
In this paper we introduce an adaptive, \u27self-contained\u27 genetic algorithm (GA) with steady-st...
process and maintain a population of potential solutions to a given problem. Through the population...
A statistics-based adaptive non-uniform mutation (SANUM) is presented for genetic algorithms (GAs), ...
Copyright @ 2006 ACMIn this paper, a new gene based adaptive mutation scheme is proposed for genetic...
Evolutionary algorithms (EAs) are a class of stochastic search and optimization algorithms that are ...
Evolutionary algorithms (EAs) are a class of stochastic search and optimization algorithms that are ...
Traditionally in Genetic Algorithms, the mutation probability parameter maintains a constant value d...
Traditionally in Genetic Algorithms, the mutation probability parameter maintains a constant value d...
The genetic algorithm (GA) is a meta-heuristic search algorithm based on mechanisms abstracted from ...
Genetic algorithms (GAs) are a class of stochastic optimization methods inspired by the principles o...
Adaptive Genetic Algorithms extend the Standard Gas to use dynamic procedures to apply evolutionary ...
. It has long been recognised that the choice of recombination and mutation operators and the rates ...
Traditionally in Genetic Algorithms, the mutation probability parameter maintains a constant value d...
Abstract- Bit mutation in genetic algorithms is usually done with a single fixed probability. Method...
In this paper, we provided an extension of our previous work on adaptive genetic algorithm [1]. Each...
In this paper we introduce an adaptive, \u27self-contained\u27 genetic algorithm (GA) with steady-st...
process and maintain a population of potential solutions to a given problem. Through the population...