Relevance Estimation and Value Calibration of Evolutionary Algorithm Parameters

Proceedings of the Twentieth International Joint Conference on Artificial Intelligence, IJCAI'07

Category: Conferences Publication Date: December, 2007 Editor(s): Manuela M. Veloso Pages: 975--980 Citekey: Nannen-Eiben:2007a
Keywords: Parameter control, model selection, evolutionary algorithm, estimation of distribution algorithm

The main objective of this paper is to present and evaluate a method that helps to calibrate the parameters of an evolutionary algorithm in a systematic and semi-automated manner. The method for Relevance Estimation and Value Calibration of EA parameters (REVAC) is empirically evaluated in two different ways. First, we use abstract test cases reflecting the typical properties of EA parameter spaces. Here we observe that REVAC is able to approximate the exact (hand-coded) relevance of parameters and it works robustly with measurement noise that is highly variable and not normally distributed. Second, we use REVAC for calibrating GAs for a number of common objective functions. Here we obtain a common sense validation, REVAC finds mutation rate pm much more sensitive
than crossover rate pc and it recommends intuitively sound values: pm between 0.01 and 0.1, and 0.6 ≤ pc ≤ 1.0.