Please use this identifier to cite or link to this item: http://repositorio.unitau.br/jspui/handle/20.500.11874/2649
metadata.dc.type: Artigo de Periódico
Title: Global optimization using q-gradients
Authors: Gouvea, Erica J. C.
Regis, Rommel G.
Soterroni, Aline C.
Scarabello, Marluce C.
Ramos, Fernando M.
Abstract: The q-gradient vector is a generalization of the gradient vector based on the q-derivative. We present two global optimization methods that do not require ordinary derivatives: a q-analog of the Steepest Descent method called the q-G method and a q-analog of the Conjugate Gradient method called the q-CG method. Both q-G and q-CG are reduced to their classical versions when q equals 1. These methods are implemented in such a way that the search process gradually shifts from global in the beginning to almost local search in the end. Moreover, Gaussian perturbations are used in some iterations to guarantee the convergence of the methods to the global minimum in a probabilistic sense. We compare q-G and q-CG with their classical versions and with other methods, including CMA-ES, a variant of Controlled Random Search, and an interior point method that uses finite-difference derivatives, on 27 well-known test problems. In general, the q-G and q-CG methods are very promising and competitive, especially when applied to multimodal problems. (C) 2016 Elsevier B.V. All rights reserved.
metadata.dc.language: Inglês
metadata.dc.publisher.country: Holanda
Publisher: Elsevier Science Bv
metadata.dc.rights: Em verificação
metadata.dc.identifier.doi: 10.1016/j.ejor.2016.01.001
URI: http://repositorio.unitau.br/jspui/handle/20.500.11874/2649
Issue Date: 2016
Appears in Collections:Artigos de Periódicos

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