Publication | Closed Access
On self-adaptive features in real-parameter evolutionary algorithms
253
Citations
30
References
2001
Year
Artificial IntelligenceSelf-adaptive Evolution StrategiesMemetic AlgorithmEvolution StrategySelf-adaptive FeaturesGenetic AlgorithmsFitnessEngineeringEvolutionary BiologySa-ea OperatorsGenetic AlgorithmSystems EngineeringEvolutionary AlgorithmsComputer ScienceEvolution-based MethodSelf-adaptive Evolutionary AlgorithmsEvolutionary Programming
Due to the flexibility in adapting to different fitness landscapes, self-adaptive evolutionary algorithms (SA-EAs) have been gaining popularity in the recent past. In this paper, we postulate the properties that SA-EA operators should have for successful applications in real-valued search spaces. Specifically, population mean and variance of a number of SA-EA operators such as various real-parameter crossover operators and self-adaptive evolution strategies are calculated for this purpose. Simulation results are shown to verify the theoretical calculations. The postulations and population variance calculations explain why self-adaptive genetic algorithms and evolution strategies have shown similar performance in the past and also suggest appropriate strategy parameter values, which must be chosen while applying and comparing different SA-EAs.
| Year | Citations | |
|---|---|---|
Page 1
Page 1