Considerable empirical results have been reported on the computational performance of genetic algorithms but little has been studied on their convergence behavior or on stopping criteria. In this paper we derive bounds on the number of iterations required to achieve a level of confidence to guarantee that a genetic algorithm has seen all populations and, hence, an optimal solution. © 1996 INFORMS
Evolutionary Algorithms, also known as Genetic Algorithms in a former terminology, are probabilistic...
This paper presents a theoretical analysis of the convergence conditions for evolutionary algorithms...
Original article can be found at: http://www.sciencedirect.com/science/journal/03043975 Copyright El...
Genetic Algorithm is an algorithm imitating the natural evolution process in solving optimization pr...
It is difficult to predict a genetic algorithm's behavior on an arbitrary problem. Combining ge...
This paper presents a lower-bound result on the computational power of a genetic algorithm in the co...
Convergence of genetic algorithms in the form of asymptotic stability requirements is discussed. Som...
The paper is devoted to upper bounds on run-time of Non-Elitist Genetic Algorithms until some target...
A genetic algorithm is a technique designed to search large problem spaces using the Darwinian conce...
This paper surveys strategies applied to avoid premature convergence in Genetic Algorithms (GAs).Gen...
AbstractThis paper discusses the convergence rates of genetic algorithms by using the minorization c...
Theoretical models of Turing complete linear genetic programming (GP) programs suggest the fraction...
summary:Evolutionary Algorithms, also known as Genetic Algorithms in a former terminology, are proba...
The infinite population simple genetic algorithm is a discrete dynamical system model of a genetic a...
Fitness distributions (landscapes) of programs tend to a limit as they get bigger. Markov chain conv...
Evolutionary Algorithms, also known as Genetic Algorithms in a former terminology, are probabilistic...
This paper presents a theoretical analysis of the convergence conditions for evolutionary algorithms...
Original article can be found at: http://www.sciencedirect.com/science/journal/03043975 Copyright El...
Genetic Algorithm is an algorithm imitating the natural evolution process in solving optimization pr...
It is difficult to predict a genetic algorithm's behavior on an arbitrary problem. Combining ge...
This paper presents a lower-bound result on the computational power of a genetic algorithm in the co...
Convergence of genetic algorithms in the form of asymptotic stability requirements is discussed. Som...
The paper is devoted to upper bounds on run-time of Non-Elitist Genetic Algorithms until some target...
A genetic algorithm is a technique designed to search large problem spaces using the Darwinian conce...
This paper surveys strategies applied to avoid premature convergence in Genetic Algorithms (GAs).Gen...
AbstractThis paper discusses the convergence rates of genetic algorithms by using the minorization c...
Theoretical models of Turing complete linear genetic programming (GP) programs suggest the fraction...
summary:Evolutionary Algorithms, also known as Genetic Algorithms in a former terminology, are proba...
The infinite population simple genetic algorithm is a discrete dynamical system model of a genetic a...
Fitness distributions (landscapes) of programs tend to a limit as they get bigger. Markov chain conv...
Evolutionary Algorithms, also known as Genetic Algorithms in a former terminology, are probabilistic...
This paper presents a theoretical analysis of the convergence conditions for evolutionary algorithms...
Original article can be found at: http://www.sciencedirect.com/science/journal/03043975 Copyright El...