On the taxonomy of optimization problems under estimation of distribution algorithms

Date

2013-09-13

Authors

Mendiburu, Alexander
Santana, Roberto
Lozano, José Antonio

Director

Publisher

MIT Press Journals
Acceso cerrado / Sarbide itxia
Artículo / Artikulua

Project identifier

  • MICINN//TIN2010-14931/ES/ recolecta
Impacto
No disponible en Scopus

Abstract

Understanding the relationship between a search algorithm and the space of problems is a fundamental issue in the optimization field. In this paper, we lay the foundations to elaborate taxonomies of problems under estimation of distribution algorithms (EDAs). By using an infinite population model and assuming that the selection operator is based on the rank of the solutions, we group optimization problems according to the behavior of the EDA. Throughout the definition of an equivalence relation between functions it is possible to partition the space of problems in equivalence classes in which the algorithm has the same behavior. We show that only the probabilistic model is able to generate different partitions of the set of possible problems and hence, it predetermines the number of different behaviors that the algorithm can exhibit. As a natural consequence of our definitions, all the objective functions are in the same equivalence class when the algorithm does not impose restrictions to the probabilistic model. The taxonomy of problems, which is also valid for finite populations, is studied in depth for a simple EDA that considers independence among the variables of the problem. We provide the sufficient and necessary condition to decide the equivalence between functions and then we develop the operators to describe and count the members of a class. In addition, we show the intrinsic relation between univariate EDAs and the neighborhood system induced by the Hamming distance by proving that all the functions in the same class have the same number of local optima and that they are in the same ranking positions. Finally, we carry out numerical simulations in order to analyze the different behaviors that the algorithm can exhibit for the functions defined over the search space {0,1}^3

Description

Acceso cerrado a este documento. No se encuentra disponible para la consulta pública. Depositado en Academica-e para cumplir con los requisitos de evaluación y acreditación académica del autor/a (sexenios, acreditaciones, etc.).

Keywords

Estimation of distribution algorithms, Probabilistic models, Factorizations, Rank-based selection, Model of infinite population, Equivalence classes, Taxonomy of functions, Neighborhood system, Dynamical systems

Department

Estadística, Informática y Matemáticas / Estatistika, Informatika eta Matematika

Faculty/School

Degree

Doctorate program

item.page.cita

Echegoyen, C., Mendiburu, A., Santana, R., Lozano, J. A. (2013) On the taxonomy of optimization problems under estimation of distribution algorithms. Evolutionary Computation, 21(3), 471-495. https://doi.org/10.1162/EVCO_a_00095

item.page.rights

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