The performance of Evolutionary Programming (EP) is affected by many factors (e.g. mutation operators and selection strategies). Although the conventional approach with Gaussian mutation operator may be efficient, the initial scale of the whole population can be very large. This may lead to the conventional EP taking too long to reach convergence. To combat this problem, EP has been modified in various ways. In particular, modifications of the mutation operator may significantly improve the performance of EP. However, operators are only efficient within certain fitness landscapes. The mixed strategies have therefore been proposed in order to combine the advantages of different operators. The design of a mixed strategy is currently based on ...
Although initially conceived for evolving finite state machines, Evolutionary Programming (EP), in i...
Parameter tuning in Evolutionary Algorithms (EA) generally result in suboptimal choices of values be...
Evolutionary algorithms can be used to solve complex optimization tasks. However, adequate parameter...
The performance of Evolutionary Programming (EP) is affected by many factors (e.g. mutation operator...
(EP) is affected by many factors (e.g. mutation operators and selection strategies). Although the co...
Evolutionary programming has been widely applied to solve global optimization problems. Its performa...
Different mutation operators such as Gaussian, Cauchy and Lévy mutations have been proposed in evolu...
Abstract—Evolutionary Programming (EP) has been modi-fied in various ways. In particular, modificati...
Abstract—This paper presents an online demo of evolutionary programming using a mixed mutation strat...
We review different techniques for improving GA performance. By analysing the fitness landscape, a c...
Differential evolution (DE) is a simple, effective, and robust algorithm, which has demonstrated exc...
Abstract. Different mutation operators have been proposed in evolutionary programming. However, each...
Mixed strategy evolutionary algorithms (EAs) aim at integrating several mutation operators into a si...
Genetic algorithms (GAs) have been used to evolve optimal/sub-optimal solutions of many problems. Wh...
Okabe T, Jin Y, Sendhoff B. Combination of Genetic Algorithms and Evolution Strategies with Self-ada...
Although initially conceived for evolving finite state machines, Evolutionary Programming (EP), in i...
Parameter tuning in Evolutionary Algorithms (EA) generally result in suboptimal choices of values be...
Evolutionary algorithms can be used to solve complex optimization tasks. However, adequate parameter...
The performance of Evolutionary Programming (EP) is affected by many factors (e.g. mutation operator...
(EP) is affected by many factors (e.g. mutation operators and selection strategies). Although the co...
Evolutionary programming has been widely applied to solve global optimization problems. Its performa...
Different mutation operators such as Gaussian, Cauchy and Lévy mutations have been proposed in evolu...
Abstract—Evolutionary Programming (EP) has been modi-fied in various ways. In particular, modificati...
Abstract—This paper presents an online demo of evolutionary programming using a mixed mutation strat...
We review different techniques for improving GA performance. By analysing the fitness landscape, a c...
Differential evolution (DE) is a simple, effective, and robust algorithm, which has demonstrated exc...
Abstract. Different mutation operators have been proposed in evolutionary programming. However, each...
Mixed strategy evolutionary algorithms (EAs) aim at integrating several mutation operators into a si...
Genetic algorithms (GAs) have been used to evolve optimal/sub-optimal solutions of many problems. Wh...
Okabe T, Jin Y, Sendhoff B. Combination of Genetic Algorithms and Evolution Strategies with Self-ada...
Although initially conceived for evolving finite state machines, Evolutionary Programming (EP), in i...
Parameter tuning in Evolutionary Algorithms (EA) generally result in suboptimal choices of values be...
Evolutionary algorithms can be used to solve complex optimization tasks. However, adequate parameter...