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Let’s Get Ready to Rumble: Crossover Versus Mutation Head to Head

Kumara Sastry1,2 and David E. Goldberg1,3

1Illinois Genetic Algorithms Laboratory (IlliGAL)
ksastry@uiuc.edu
deg@uiuc.edu

2Department of Material Science & Engineering

3Department of General Engineering, University of Illinois at Urbana-Champaign, Urbana IL 61801

Abstract. This paper analyzes the relative advantages between crossover and mutation on a class of deterministic and stochastic additively separable problems. This study assumes that the recombination and mutation operators have the knowledge of the building blocks (BBs) and effectively exchange or search among competing BBs. Facetwise models of convergence time and population sizing have been used to determine the scalability of each algorithm. The analysis shows that for additively separable deterministic problems, the BB-wise mutation is more efficient than crossover, while the crossover outperforms the mutation on additively separable problems perturbed with additive Gaussian noise. The results show that the speed-up of using BB-wise mutation on deterministic problems is , where k is the BB size, and m is the number of BBs. Likewise, the speed-up of using crossover on stochastic problems with fixed noise variance is .

LNCS 3103, p. 126 ff.

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