In the setting of multimodal function optimization, engineering and machine learning, identifying multiple peaks and maintaining subpopulations of the search space are two central themes when Genetic Algorithms (GAs) are employed. In this paper, an immune system model is adopted to develop a framework for exploring the role of mate selection in GAs with respect to these two issues. The experimental results reported in the paper will shed more light into how mate selection schemes compare to traditional selection schemes. In particular, we show that dissimilar mating is beneficial in identifying multiple peaks, yet harmful in maintaining subpopulations of the search space
The primary objective of this paper is to put forward a general frameworkunder which clear definitio...
Theoretical studies suggest that mating and pair formation is not likely to be random. Computer simu...
Comparatively few studies have addressed directly the question of quantifying the benefits to be had...
The process of information exchange among the population of individuals manipulated by Genetic Algor...
In typical applications, genetic algorithms (GAs) process populations of potential problem solutions...
els focus on problems where each individual's tness is independent of others. In (Huang, 2002a)...
In the Genetic Algorithm (GA) literature, many models focus on problems where each individual'...
The Genetic Algorithm (GA) is a popular approach to search and optimization that has been applied to...
. The ability to obtain multiple distinct solutions in a single run is an important, though often fo...
This paper describes an immune system model based on binary strings. The purpose of the model is to ...
This thesis is concerned with using genetic algorithms to investigate ecological niche concepts. A G...
Abstract Background Female mate choice may be adaptive when males exhibit heritable genetic variatio...
Genetic algorithms typically use crossover, which relies onmating a set of selected par-ents. As par...
This paper reports experimental results to test the hypothesis: does the technique change the overal...
The Multi-Level Selection Genetic Algorithm (MLSGA) is shown to increase the performance of a simple...
The primary objective of this paper is to put forward a general frameworkunder which clear definitio...
Theoretical studies suggest that mating and pair formation is not likely to be random. Computer simu...
Comparatively few studies have addressed directly the question of quantifying the benefits to be had...
The process of information exchange among the population of individuals manipulated by Genetic Algor...
In typical applications, genetic algorithms (GAs) process populations of potential problem solutions...
els focus on problems where each individual's tness is independent of others. In (Huang, 2002a)...
In the Genetic Algorithm (GA) literature, many models focus on problems where each individual'...
The Genetic Algorithm (GA) is a popular approach to search and optimization that has been applied to...
. The ability to obtain multiple distinct solutions in a single run is an important, though often fo...
This paper describes an immune system model based on binary strings. The purpose of the model is to ...
This thesis is concerned with using genetic algorithms to investigate ecological niche concepts. A G...
Abstract Background Female mate choice may be adaptive when males exhibit heritable genetic variatio...
Genetic algorithms typically use crossover, which relies onmating a set of selected par-ents. As par...
This paper reports experimental results to test the hypothesis: does the technique change the overal...
The Multi-Level Selection Genetic Algorithm (MLSGA) is shown to increase the performance of a simple...
The primary objective of this paper is to put forward a general frameworkunder which clear definitio...
Theoretical studies suggest that mating and pair formation is not likely to be random. Computer simu...
Comparatively few studies have addressed directly the question of quantifying the benefits to be had...