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Evolutionary Computation

Fall 2005, Vol. 13, No. 3, Pages 279-302
(doi: 10.1162/1063656054794806)
© 2005 Massachusetts Institute of Technology
Convergence Time for the Linkage Learning Genetic Algorithm
Article PDF (242.52 KB)
Abstract

This paper identifies the sequential behavior of the linkage learning genetic algorithm, introduces the tightness time model for a single building block, and develops the connection between the sequential behavior and the tightness time model. By integrating the first-building-block model based on the sequential behavior, the tightness time model, and the connection between these two models, a convergence time model is constructed and empirically verified. The proposed convergence time model explains the exponentially growing time required by the linkage learning genetic algorithm when solving uniformly scaled problems.