In this paper we present an analysis of gene pool recombination in genetic algorithms in the context of the onemax function. We have developed a Markov chain framework for computing the probability of convergence, and have shown how the analysis can be used to estimate the critical population size. The Markov model is used to investigate drift in the multiple-loci case. Additionally, we have estimated the minimum population size needed for optimality, and recurrence relations describing the growth of the advantageous allele in the infinite-population case have been derived. Simulation results are presented
A fast algorithm for computing recombination is developed for model organisms with selection on hapl...
This paper uses Markov chains to analyze the search quality of a bounding case of parallel genetic a...
In this paper we propose, model theoretically and study a general notion of recombination for fixed...
Deterministic equations are derived describing the evolution of gene frequencies for two and three l...
A formalism is presented for modelling the evolutionary dynamics of a population of gene sequences. ...
This article studies the convergence characteristics of a genetic algorithm (GA) in which individual...
This paper was written while Alden Wright was visiting the School of Computer Science, University of...
Abstract — This paper presents a Markov model for the conver-gence of multi-parent genetic algorithm...
We consider many-site mutation-recombination models of molecular evolution, where fitness is a funct...
It is difficult to directly observe processes like natural selection at the genetic level, but relat...
Several mathematical models have been developed to describe the genetic structure of populations. Mo...
Abstract. This paper investigates genetic drift in multi-parent genetic algorithms (MPGAs). An exact...
A fast algorithm for computing multi-locus recombination is extended to include a recombination-modi...
We study the discrete-time evolution of a recombination transformation in population genetics. The t...
Evolutionary algorithms are general purpose optimization algorithms. Despite their successes in many...
A fast algorithm for computing recombination is developed for model organisms with selection on hapl...
This paper uses Markov chains to analyze the search quality of a bounding case of parallel genetic a...
In this paper we propose, model theoretically and study a general notion of recombination for fixed...
Deterministic equations are derived describing the evolution of gene frequencies for two and three l...
A formalism is presented for modelling the evolutionary dynamics of a population of gene sequences. ...
This article studies the convergence characteristics of a genetic algorithm (GA) in which individual...
This paper was written while Alden Wright was visiting the School of Computer Science, University of...
Abstract — This paper presents a Markov model for the conver-gence of multi-parent genetic algorithm...
We consider many-site mutation-recombination models of molecular evolution, where fitness is a funct...
It is difficult to directly observe processes like natural selection at the genetic level, but relat...
Several mathematical models have been developed to describe the genetic structure of populations. Mo...
Abstract. This paper investigates genetic drift in multi-parent genetic algorithms (MPGAs). An exact...
A fast algorithm for computing multi-locus recombination is extended to include a recombination-modi...
We study the discrete-time evolution of a recombination transformation in population genetics. The t...
Evolutionary algorithms are general purpose optimization algorithms. Despite their successes in many...
A fast algorithm for computing recombination is developed for model organisms with selection on hapl...
This paper uses Markov chains to analyze the search quality of a bounding case of parallel genetic a...
In this paper we propose, model theoretically and study a general notion of recombination for fixed...