Abstract. In this paper we evaluate on-the-fly population (re)sizing mechanisms for evolutionary algorithms (EAs). Evaluation is done by an experimental comparison, where the contestants are various existing methods and a new mechanism, introduced here. These comparisons consider EA performance in terms of success rate, speed, and solution quality, measured on a variety of fitness landscapes. These landscapes are created by a generator that allows for gradual tuning of their characteristics. Our test suite covers a wide span of landscapes ranging from a smooth one-peak landscape to a rugged 1000-peak one. The experiments show that the population (re)sizing mechanisms exhibit significant differences in speed, measured by the number of fitnes...
This paper studies fitness inheritance as an efficiency enhancement technique for genetic and evolut...
AbstractThe utilization of populations is one of the most important features of evolutionary algorit...
We investigate theoretically how the fitness landscape influences the optimization process of popula...
Abstract. Evolutionary Algorithms (EAs) are population-based ran-domized optimizers often solving pr...
Contains fulltext : 84529.pdf (author's version ) (Open Access)8th International C...
The number of parameters that need to be man ually tuned to achieve good performance of Evolutionary...
This paper reviews the topic of population sizing in genetic algorithms. It starts by revisiting the...
Abstract. Usually Evolutionary Algorithms keep the size of the population fixed. Nevertheless, in Ev...
Traditional evolutionary algorithms are powerful problem solvers that have several fixed parameters ...
Deciding on an appropriate population size for a given Genetic Algorithm (GA) application can often ...
In the field of Evolutionary Computation, a common myth that “An Evolutionary Algorithm (EA) will ou...
Evolutionary algorithms (EAs) are population-based randomized search heuristics that often solve pro...
AbstractEvolutionary algorithms (EAs) find numerous applications, and practical knowledge on EAs is ...
Abstract. Traditional interactive genetic algorithms often have a small population size because of a...
Parameter control in evolutionary algorithms (EAs) has been shown to be beneficial; however, the con...
This paper studies fitness inheritance as an efficiency enhancement technique for genetic and evolut...
AbstractThe utilization of populations is one of the most important features of evolutionary algorit...
We investigate theoretically how the fitness landscape influences the optimization process of popula...
Abstract. Evolutionary Algorithms (EAs) are population-based ran-domized optimizers often solving pr...
Contains fulltext : 84529.pdf (author's version ) (Open Access)8th International C...
The number of parameters that need to be man ually tuned to achieve good performance of Evolutionary...
This paper reviews the topic of population sizing in genetic algorithms. It starts by revisiting the...
Abstract. Usually Evolutionary Algorithms keep the size of the population fixed. Nevertheless, in Ev...
Traditional evolutionary algorithms are powerful problem solvers that have several fixed parameters ...
Deciding on an appropriate population size for a given Genetic Algorithm (GA) application can often ...
In the field of Evolutionary Computation, a common myth that “An Evolutionary Algorithm (EA) will ou...
Evolutionary algorithms (EAs) are population-based randomized search heuristics that often solve pro...
AbstractEvolutionary algorithms (EAs) find numerous applications, and practical knowledge on EAs is ...
Abstract. Traditional interactive genetic algorithms often have a small population size because of a...
Parameter control in evolutionary algorithms (EAs) has been shown to be beneficial; however, the con...
This paper studies fitness inheritance as an efficiency enhancement technique for genetic and evolut...
AbstractThe utilization of populations is one of the most important features of evolutionary algorit...
We investigate theoretically how the fitness landscape influences the optimization process of popula...