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Erschienen in: 4OR 3/2018

14.11.2017 | Research Paper

Quasi-Newton methods for multiobjective optimization problems

verfasst von: Vahid Morovati, Hadi Basirzadeh, Latif Pourkarimi

Erschienen in: 4OR | Ausgabe 3/2018

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Abstract

This work is an attempt to develop multiobjective versions of some well-known single objective quasi-Newton methods, including BFGS, self-scaling BFGS (SS-BFGS), and the Huang BFGS (H-BFGS). A comprehensive and comparative study of these methods is presented in this paper. The Armijo line search is used for the implementation of these methods. The numerical results show that the Armijo rule does not work the same way for the multiobjective case as for the single objective case, because, in this case, it imposes a large computational effort and significantly decreases the speed of convergence in contrast to the single objective case. Hence, we consider two cases of all multi-objective versions of quasi-Newton methods: in the presence of the Armijo line search and in the absence of any line search. Moreover, the convergence of these methods without using any line search under some mild conditions is shown. Also, by introducing a multiobjective subproblem for finding the quasi-Newton multiobjective search direction, a simple representation of the Karush–Kuhn–Tucker conditions is derived. The H-BFGS quasi-Newton multiobjective optimization method provides a higher-order accuracy in approximating the second order curvature of the problem functions than the BFGS and SS-BFGS methods. Thus, this method has some benefits compared to the other methods as shown in the numerical results. All mentioned methods proposed in this paper are evaluated and compared with each other in different aspects. To do so, some well-known test problems and performance assessment criteria are employed. Moreover, these methods are compared with each other with regard to the expended CPU time, the number of iterations, and the number of function evaluations.

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Metadaten
Titel
Quasi-Newton methods for multiobjective optimization problems
verfasst von
Vahid Morovati
Hadi Basirzadeh
Latif Pourkarimi
Publikationsdatum
14.11.2017
Verlag
Springer Berlin Heidelberg
Erschienen in
4OR / Ausgabe 3/2018
Print ISSN: 1619-4500
Elektronische ISSN: 1614-2411
DOI
https://doi.org/10.1007/s10288-017-0363-1

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