This paper presents a lower-bound result on the computational power of a genetic algorithm in the context of combinatorial optimization. We describe a new genetic algorithm, the merged genetic algorithm, and prove that for the class of monotonic functions, the algorithm finds the optimal solution, and does so with an exponential convergence rate. The analysis pertains to the ideal behavior of the algorithm where the main task reduces to showing convergence of probability distributions over the search space of combinatorial structures to the optimal one. We take exponential convergence to be indicative of efficient solvability for the sample-bounded algorithm, although a sampling theory is needed to better relate the limit behavior to actu...
Recently, Genetic Algorithms (GAs) have been investigated as a technique for solving combinatorial o...
Convergence of genetic algorithms in the form of asymptotic stability requirements is discussed. Som...
This article studies the convergence characteristics of a genetic algorithm (GA) in which individual...
The rate of convergence and the structure of stable populations are studied for a simple, and yet no...
AbstractThe most common application of genetic algorithms to combinatorial optimization problems has...
Considerable empirical results have been reported on the computational performance of genetic algori...
Abstract(i) We investigate spectral and geometric properties of the mutation-crossover operator in a...
AbstractThis paper discusses the convergence rates of genetic algorithms by using the minorization c...
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...
Evolution algorithms for combinatorial optimization have been proposed in the 70's. They did not hav...
The combinatorial optimization problem always is ubiquitous in various applications and has been pro...
This paper investigates the problem of using a genetic algorithm to converge on a small, user-define...
In this paper, we study the efficacy of genetic algorithms in the context of combinatorial optimizat...
Original article can be found at: http://www.sciencedirect.com/science/journal/03043975 Copyright El...
Recently, Genetic Algorithms (GAs) have been investigated as a technique for solving combinatorial o...
Convergence of genetic algorithms in the form of asymptotic stability requirements is discussed. Som...
This article studies the convergence characteristics of a genetic algorithm (GA) in which individual...
The rate of convergence and the structure of stable populations are studied for a simple, and yet no...
AbstractThe most common application of genetic algorithms to combinatorial optimization problems has...
Considerable empirical results have been reported on the computational performance of genetic algori...
Abstract(i) We investigate spectral and geometric properties of the mutation-crossover operator in a...
AbstractThis paper discusses the convergence rates of genetic algorithms by using the minorization c...
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...
Evolution algorithms for combinatorial optimization have been proposed in the 70's. They did not hav...
The combinatorial optimization problem always is ubiquitous in various applications and has been pro...
This paper investigates the problem of using a genetic algorithm to converge on a small, user-define...
In this paper, we study the efficacy of genetic algorithms in the context of combinatorial optimizat...
Original article can be found at: http://www.sciencedirect.com/science/journal/03043975 Copyright El...
Recently, Genetic Algorithms (GAs) have been investigated as a technique for solving combinatorial o...
Convergence of genetic algorithms in the form of asymptotic stability requirements is discussed. Som...
This article studies the convergence characteristics of a genetic algorithm (GA) in which individual...