Title of article
A comparison of methods for self-adaptation in evolutionary algorithms
Author/Authors
N. Saravanan، نويسنده , , David B. Fogel، نويسنده , , Kevin M. Nelson، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 1995
Pages
10
From page
157
To page
166
Abstract
Evolutionary algorithms, including evolutionary programming and evolution strategies, have often been applied to real-valued function optimization problems. These algorithms generally operate directly on the real values to be optimized, in contrast with genetic algorithms which usually operate on a separately coded transformation of the objective variables. Evolutionary algorithms often rely on a second-level optimization of strategy parameters, tunable variables that in part determine how each parent will generate offspring. Two alternative methods for performing this second-level optimization have been proposed and are compared across a series of function optimization tasks. The results appear to favor the approach offered originally in evolution strategies, although the applicability of the findings may be limited to the case where each parameter of a parent solution is perturbed independently of all others.
Keywords
Genetic algorithms , Strategyparameters , Evolutionary algorithms , Real-valued function optimization problems
Journal title
BioSystems
Serial Year
1995
Journal title
BioSystems
Record number
497186
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