June 26 - 30, 2004 Saturday to Wednesday Seattle, Washington, USA
Session:
OBUPM - Optimization by Building and Using Probabilistic Models
Title:
Theoretical and Experimental Investigation of Estimation of Distribution Algorithms
Authors:
Heinz Muehlenbein Robin Hoens
Abstract:
Estimation of Distribution Algorithms (EDAs) have been proposed as an extension of genetic algorithms for optimization. In this paper the major design issues are presented within a general interdisciplinary framework. It is shown that EDA algorithms compute maximum entropy or minimum relative entropy approximations. A special structure learning algorithm LFDA is analyzed in detail. It is based on a finite minimum log-likelihood ratio principle. We investigate important parameters of the presented EDA algorithms by analyzing the performance on synthetic benchmark functions.