Publication | Open Access
Boltzmannn Weighted Selection Improves Performance of Genetic Algorithms
12
Citations
0
References
1991
Year
Artificial IntelligenceMemetic AlgorithmEngineeringGenetic AlgorithmsMachine LearningSimulated AnnealingIntelligent OptimizationVariable Selective PressureComputer EngineeringGenetic AlgorithmSystems EngineeringHybrid Optimization TechniqueComputer ScienceBoltzmannn Weighted SelectionSelective PressureEvolutionary Multimodal OptimizationEvolutionary Programming
Modifiable Boltzmann selective pressure is investigated as a tool to control variability in optimizations using genetic algorithms. An implementation of variable selective pressure, modeled after the use of temperature as a parameter in simulated annealing approaches, is described. The convergence behavior of optimization runs is illustrated as a function of selective pressure; the method is compared to a genetic algorithm lacking this control feature and is shown to exhibit superior convergence properties on a small set of test problems. An analysis is presented that compares the selective pressure of this algorithm to a standard selection procedure.