Optimization is concerned with the finding of global optima (hence the name) of problems that can be cast in the form of a function of several variables and constraints thereof. Among the searching methods, {em Evolutionary Algorithms} have been shown to be adaptable and general tools that have often outperformed traditional {em ad hoc} methods. The {em Breeder Genetic Algorithm} (BGA) combines a direct representation with a nice conceptual simplicity. This work contains a general description of the algorithm and a detailed study on a collection of function optimization tasks. The results show that the BGA is a powerful and reliable searching algorithm. The main discussion concerns the choice of genetic operators and their parameters, among...
Abstract: Genetic algorithms are search and optimization techniques which have their origin and insp...
New genetic operators are described that assure preservation of the feasibility of candidate solutio...
Today, many complex multiobjective problems are dealt with using genetic algorithms (GAs). They appl...
In this paper a new genetic algorithm called the Breeder Genetic Algorithm (BGA) is introduced. The ...
A large number of practical optimization problems involve elements of quite diverse nature, describe...
Supervised training from examples of a feed-forward neural network is a classical problem, tradition...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
The dynamic behavior of mutation and crossover is investigated with the Breeder Genetic Algorithm. T...
Evolutionary Algorithms started in the 1950's with [Fra57] and [Box57]. They form a powerful fa...
This paper proposes an effective approach to function optimisation using the concept of genetic algo...
Genetic algorithm is a method of optimization based on the concepts of natural selection and genetic...
Several of the recent optimization techniques have been adapted from nature. The elitist nondominate...
[[abstract]]According to the results of previous research, the genetic algorithm (GA) is a good tech...
Creating or preparing Multi-objective formulations are a realistic models for many complex engineeri...
Use of non-deterministic algorithms for solving multi-variable optimization problems is widely used ...
Abstract: Genetic algorithms are search and optimization techniques which have their origin and insp...
New genetic operators are described that assure preservation of the feasibility of candidate solutio...
Today, many complex multiobjective problems are dealt with using genetic algorithms (GAs). They appl...
In this paper a new genetic algorithm called the Breeder Genetic Algorithm (BGA) is introduced. The ...
A large number of practical optimization problems involve elements of quite diverse nature, describe...
Supervised training from examples of a feed-forward neural network is a classical problem, tradition...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
The dynamic behavior of mutation and crossover is investigated with the Breeder Genetic Algorithm. T...
Evolutionary Algorithms started in the 1950's with [Fra57] and [Box57]. They form a powerful fa...
This paper proposes an effective approach to function optimisation using the concept of genetic algo...
Genetic algorithm is a method of optimization based on the concepts of natural selection and genetic...
Several of the recent optimization techniques have been adapted from nature. The elitist nondominate...
[[abstract]]According to the results of previous research, the genetic algorithm (GA) is a good tech...
Creating or preparing Multi-objective formulations are a realistic models for many complex engineeri...
Use of non-deterministic algorithms for solving multi-variable optimization problems is widely used ...
Abstract: Genetic algorithms are search and optimization techniques which have their origin and insp...
New genetic operators are described that assure preservation of the feasibility of candidate solutio...
Today, many complex multiobjective problems are dealt with using genetic algorithms (GAs). They appl...