The increasing complexity of real-world optimization problems raises new challenges to evolutionary computation. Responding to these challenges, distributed evolutionary computation has received considerable attention over the past decade. This article provides a comprehensive survey of the state-of-the-art distributed evolutionary algorithms and models, which have been classified into two groups according to their task division mechanism. Population-distributed models are presented with master-slave, island, cellular, hierarchical, and pool architectures, which parallelize an evolution task at population, individual, or operation levels. Dimension-distributed models include coevolution and multi-agent models, which focus on dimension reduc...
Unpublished[1] G. Dick and P. Whigham. Implementation of genetic algorithms on various interconnecti...
Abstract—In this article, we evaluate the applicability of Genetic Programming (GP) for the evolutio...
. In this paper, we apply a competitive coevolutionary approach using loosely coupled genetic algori...
The increasing complexity of real-world optimization problems raises new challenges to evolutionary ...
The genetic algorithm paradigm is a well-known heuristic for solving many problems in science and en...
Data-intensive computing has emerged as a key player for processing large volumes of data exploiting...
Parallel genetic algorithms, models and implementations, attempts to exploit the intrinsically paral...
Lecture #1: From Evolution Theory to Evolutionary Computation. Evolutionary computation is a subfiel...
peer reviewedThis paper explores the scalability and performance of pool and island based evolutiona...
Parallelization of an evolutionary algorithm takes the advantage of modular population division and ...
'Evolutionary algorithms' is the collective name for a group of relatively new stochastic search alg...
Despite all the appealing features of Evolutionary Algorithms (EAs), thousands of calls to the analy...
Quality-Diversity search is the process of finding diverse solutions within the search space which d...
Evolutionary Computation (EC), drawing inspiration from natural evolutionary processes, has solidifi...
The genetic algorithm is a general purpose, population-based search algorithm in which the individua...
Unpublished[1] G. Dick and P. Whigham. Implementation of genetic algorithms on various interconnecti...
Abstract—In this article, we evaluate the applicability of Genetic Programming (GP) for the evolutio...
. In this paper, we apply a competitive coevolutionary approach using loosely coupled genetic algori...
The increasing complexity of real-world optimization problems raises new challenges to evolutionary ...
The genetic algorithm paradigm is a well-known heuristic for solving many problems in science and en...
Data-intensive computing has emerged as a key player for processing large volumes of data exploiting...
Parallel genetic algorithms, models and implementations, attempts to exploit the intrinsically paral...
Lecture #1: From Evolution Theory to Evolutionary Computation. Evolutionary computation is a subfiel...
peer reviewedThis paper explores the scalability and performance of pool and island based evolutiona...
Parallelization of an evolutionary algorithm takes the advantage of modular population division and ...
'Evolutionary algorithms' is the collective name for a group of relatively new stochastic search alg...
Despite all the appealing features of Evolutionary Algorithms (EAs), thousands of calls to the analy...
Quality-Diversity search is the process of finding diverse solutions within the search space which d...
Evolutionary Computation (EC), drawing inspiration from natural evolutionary processes, has solidifi...
The genetic algorithm is a general purpose, population-based search algorithm in which the individua...
Unpublished[1] G. Dick and P. Whigham. Implementation of genetic algorithms on various interconnecti...
Abstract—In this article, we evaluate the applicability of Genetic Programming (GP) for the evolutio...
. In this paper, we apply a competitive coevolutionary approach using loosely coupled genetic algori...