Genetic adaptive algorithms provide an efficient way to search large function spaces, and are increasingly being used in learning systems. One problem plaguing genetic learning algorithms is premature convergence, or convergence of the pool of active structures to a sub-optimal point in the space being searched. An improvement to the standard genetic adaptive algorithm is presented which guarantees diversity of the gene pool throughout the search. Maintaining genetic diversity is shown to improve off-line (or best) performance of these algorithms at the expense of poorer on-line (or average) performance, and to retard or prevent premature convergence. 1. Int reduction Genetic adaptive algorithms (GA’s) are one solution to th
Genetic algorithms are adaptive methods based on natural evolution which may be used for search and ...
Genetic Algorithms are a class of powerful, robust search techniques based on genetic inheritance an...
The current state-of-the-art of genetic algorithms is dominated by high-performing specialistsolvers...
This paper surveys strategies applied to avoid premature convergence in Genetic Algorithms (GAs).Gen...
Genetic algorithms perform an adaptive search by maintaining a population of candidate solutions tha...
Genetic Algorithms (GA) is an evolutionary inspired heuristic search algorithm. Like all heuristic s...
The ideal of designing a robust and efficient Genetic Algorithms (GAs), easy to use and applicable t...
Over the last decade, variant of genetic algorithm (GA) approaches have been used to solve various t...
In this work a Genetic Algorithm coding and a required genetic operation library has been developed ...
Abstract. Genetic algorithms are adaptive search techniques which have been used to learn high-perfo...
Parameter tuning in Evolutionary Algorithms (EA) generally result in suboptimal choices of values be...
. Genetic algorithms are widely used as optimization and adaptation tools, and they became important...
In this paper, we provided an extension of our previous work on adaptive genetic algorithm [1]. Each...
The genetic algorithm technique known as crowding preserves population diversity by pairing each off...
Genetic programming is a metaheuristic search method that uses a population of variable-length compu...
Genetic algorithms are adaptive methods based on natural evolution which may be used for search and ...
Genetic Algorithms are a class of powerful, robust search techniques based on genetic inheritance an...
The current state-of-the-art of genetic algorithms is dominated by high-performing specialistsolvers...
This paper surveys strategies applied to avoid premature convergence in Genetic Algorithms (GAs).Gen...
Genetic algorithms perform an adaptive search by maintaining a population of candidate solutions tha...
Genetic Algorithms (GA) is an evolutionary inspired heuristic search algorithm. Like all heuristic s...
The ideal of designing a robust and efficient Genetic Algorithms (GAs), easy to use and applicable t...
Over the last decade, variant of genetic algorithm (GA) approaches have been used to solve various t...
In this work a Genetic Algorithm coding and a required genetic operation library has been developed ...
Abstract. Genetic algorithms are adaptive search techniques which have been used to learn high-perfo...
Parameter tuning in Evolutionary Algorithms (EA) generally result in suboptimal choices of values be...
. Genetic algorithms are widely used as optimization and adaptation tools, and they became important...
In this paper, we provided an extension of our previous work on adaptive genetic algorithm [1]. Each...
The genetic algorithm technique known as crowding preserves population diversity by pairing each off...
Genetic programming is a metaheuristic search method that uses a population of variable-length compu...
Genetic algorithms are adaptive methods based on natural evolution which may be used for search and ...
Genetic Algorithms are a class of powerful, robust search techniques based on genetic inheritance an...
The current state-of-the-art of genetic algorithms is dominated by high-performing specialistsolvers...