In this paper we propose a crossover operator for evolutionary algorithms with real values that is based on the statistical theory of population distributions. The operator is based on the theoretical distribution of the values of the genes of the best individuals in the population. The proposed operator takes into account the localization and dispersion features of the best individuals of the population with the objective that these features would be inherited by the offspring. Our aim is the optimization of the balance between exploration and exploitation in the search process. In order to test the efficiency and robustness of this crossover, we have used a set of functions to be optimized with regard to different criteria, such as, multi...
In this study, a new crossover approach to the real-coded genetic algorithm is proposed. The approac...
The time evolution of a simple model for crossover is discussed. A variant of this model with an imp...
The paper discusses the possibility to manage search direction in genetic algorithm crossover and mu...
In this paper we propose a crossover operator for evolutionary algorithms with real values that is b...
ABSTRACT Genetic Algorithms (GAs) are a set of local search algorithms that are based on principles ...
Abstract — Genetic Algorithms are the population based search and optimization technique that mimic ...
Genetic algorithms (GA) are stimulated by population genetics and evolution at the population level ...
Abstract. Genetic algorithms (GAs) generate solutions to optimization problems using techniques insp...
Abstract(i) We investigate spectral and geometric properties of the mutation-crossover operator in a...
Genetic algorithms (GAs) represent a method that mimics the process of natural evolution in effort t...
Abstract. The performance of a genetic algorithm (GA) is dependent on many factors: the type of cros...
This work presents the SimBa (for Similarity-Based) crossover, a novel crossover operator specifical...
In this paper we study and compare the search properties of different crossover operators in genetic...
Holland's analysis of the sources of power of genetic algorithms has served as guidance for the...
In this paper, a comprehensive empirical study is conducted to evaluate the performance of a new rea...
In this study, a new crossover approach to the real-coded genetic algorithm is proposed. The approac...
The time evolution of a simple model for crossover is discussed. A variant of this model with an imp...
The paper discusses the possibility to manage search direction in genetic algorithm crossover and mu...
In this paper we propose a crossover operator for evolutionary algorithms with real values that is b...
ABSTRACT Genetic Algorithms (GAs) are a set of local search algorithms that are based on principles ...
Abstract — Genetic Algorithms are the population based search and optimization technique that mimic ...
Genetic algorithms (GA) are stimulated by population genetics and evolution at the population level ...
Abstract. Genetic algorithms (GAs) generate solutions to optimization problems using techniques insp...
Abstract(i) We investigate spectral and geometric properties of the mutation-crossover operator in a...
Genetic algorithms (GAs) represent a method that mimics the process of natural evolution in effort t...
Abstract. The performance of a genetic algorithm (GA) is dependent on many factors: the type of cros...
This work presents the SimBa (for Similarity-Based) crossover, a novel crossover operator specifical...
In this paper we study and compare the search properties of different crossover operators in genetic...
Holland's analysis of the sources of power of genetic algorithms has served as guidance for the...
In this paper, a comprehensive empirical study is conducted to evaluate the performance of a new rea...
In this study, a new crossover approach to the real-coded genetic algorithm is proposed. The approac...
The time evolution of a simple model for crossover is discussed. A variant of this model with an imp...
The paper discusses the possibility to manage search direction in genetic algorithm crossover and mu...