In the field of genetic and evolutionary algorithms (GEAs), a large amount of theory and empirical study has been focused on operators and test problems, while problem representation has often been taken as given. This book breaks with this tradition and provides a comprehensive overview on the influence of problem representations on GEA performance. The book summarizes existing knowledge regarding problem representations and describes how basic properties of representations, such as redundancy, scaling, or locality, influence the performance of GEAs and other heuristic optimization methods. Using the developed theory, representations can be analyzed and designed in a theory-guided matter. The theoretical concepts are used for solving integ...
This paper summarizes recent research on heuristic based learning procedures called Genetic Algorith...
Evolutionary algorithms have been gaining increased attention the past few years because of their ve...
Abstract. Genetic algorithms are adaptive search techniques which have been used to learn high-perfo...
Genetic programming is a promising variant of genetic algorithms that evolves dynamic, hierarchical ...
AbstractRecent empirical and theoretical studies have shown that simple parameters characterizing th...
Representation is widely recognised as a key determinant of performance in evolutionary computation...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
This paper discusses how the use of redundant representations influences the performance of genetic ...
Decision making features occur in all fields of human activities such as science and technological a...
Applying evolutionary algorithms to new problem domains is an exercise in the art of parameter tunin...
Analyzing the computational complexity of evolutionary algorithms (EAs) for binary search spaces has...
In this thesis a general mathematical framework to describe evolutionary algorithms is developed. Th...
Genetic algorithms are founded upon the principle of evolution, i.e., survival of the fittest. Hence...
In this paper we perform two experiments. In the first experiment we analyze the convergence ability...
This book sets out to explain what genetic algorithms are and how they can be used to solve real-wor...
This paper summarizes recent research on heuristic based learning procedures called Genetic Algorith...
Evolutionary algorithms have been gaining increased attention the past few years because of their ve...
Abstract. Genetic algorithms are adaptive search techniques which have been used to learn high-perfo...
Genetic programming is a promising variant of genetic algorithms that evolves dynamic, hierarchical ...
AbstractRecent empirical and theoretical studies have shown that simple parameters characterizing th...
Representation is widely recognised as a key determinant of performance in evolutionary computation...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
This paper discusses how the use of redundant representations influences the performance of genetic ...
Decision making features occur in all fields of human activities such as science and technological a...
Applying evolutionary algorithms to new problem domains is an exercise in the art of parameter tunin...
Analyzing the computational complexity of evolutionary algorithms (EAs) for binary search spaces has...
In this thesis a general mathematical framework to describe evolutionary algorithms is developed. Th...
Genetic algorithms are founded upon the principle of evolution, i.e., survival of the fittest. Hence...
In this paper we perform two experiments. In the first experiment we analyze the convergence ability...
This book sets out to explain what genetic algorithms are and how they can be used to solve real-wor...
This paper summarizes recent research on heuristic based learning procedures called Genetic Algorith...
Evolutionary algorithms have been gaining increased attention the past few years because of their ve...
Abstract. Genetic algorithms are adaptive search techniques which have been used to learn high-perfo...