On crossing fitness valleys with majority-vote crossover and estimation-of-distribution algorithms
Carsten Witt
Abstract
The benefits of using crossover in crossing fitness gaps have been studied extensively in evolutionary computation. Recent runtime results show that majority-vote crossover is particularly efficient at optimizing the well-known Jump benchmark function that includes a fitness gap next to the global optimum. Also estimation-of-distribution algorithms (EDAs), which use an implicit crossover, are much more efficient on Jump than typical mutation-based algorithms. However, the allowed gap size for polynomial runtimes with EDAs is at most logarithmic in the problem dimension n.
Topics & Concepts
CrossoverComputer scienceEstimationAlgorithmEstimation of distribution algorithmDistribution (mathematics)StatisticsArtificial intelligenceMathematicsEngineeringSystems engineeringMathematical analysisMetaheuristic Optimization Algorithms ResearchOpinion Dynamics and Social InfluenceGame Theory and Applications