Structured minimal-memory inexact quasi-Newton method and secant preconditioners for augmented Lagrangian optimization


Autoria(s): BIRGIN, E. G.; MARTINEZ, J. M.
Contribuinte(s)

UNIVERSIDADE DE SÃO PAULO

Data(s)

20/10/2012

20/10/2012

2008

Resumo

Augmented Lagrangian methods for large-scale optimization usually require efficient algorithms for minimization with box constraints. On the other hand, active-set box-constraint methods employ unconstrained optimization algorithms for minimization inside the faces of the box. Several approaches may be employed for computing internal search directions in the large-scale case. In this paper a minimal-memory quasi-Newton approach with secant preconditioners is proposed, taking into account the structure of Augmented Lagrangians that come from the popular Powell-Hestenes-Rockafellar scheme. A combined algorithm, that uses the quasi-Newton formula or a truncated-Newton procedure, depending on the presence of active constraints in the penalty-Lagrangian function, is also suggested. Numerical experiments using the Cute collection are presented.

Identificador

COMPUTATIONAL OPTIMIZATION AND APPLICATIONS, v.39, n.1, p.1-16, 2008

0926-6003

http://producao.usp.br/handle/BDPI/30417

10.1007/s10589-007-9050-z

http://dx.doi.org/10.1007/s10589-007-9050-z

Idioma(s)

eng

Publicador

SPRINGER

Relação

Computational Optimization and Applications

Direitos

restrictedAccess

Copyright SPRINGER

Palavras-Chave #nonlinear programming #augmented Lagrangian methods #box constraints #quasi-Newton #truncated-Newton #BOUND-CONSTRAINED OPTIMIZATION #LINEAR-DEPENDENCE CONDITION #PROJECTED GRADIENT METHODS #UNCONSTRAINED MINIMIZATION #GUARANTEED DESCENT #CONVEX-SETS #ALGORITHM #BARZILAI #QUALIFICATION #CONVERGENCE #Operations Research & Management Science #Mathematics, Applied
Tipo

article

original article

publishedVersion