A relaxed constant positive linear dependence constraint qualification and applications


Autoria(s): Andreani, Roberto; Haeser, Gabriel; Laura Schuverdt, Maria; Silva, Paulo J. S.
Contribuinte(s)

UNIVERSIDADE DE SÃO PAULO

Data(s)

14/10/2013

14/10/2013

2012

Resumo

In this work we introduce a relaxed version of the constant positive linear dependence constraint qualification (CPLD) that we call RCPLD. This development is inspired by a recent generalization of the constant rank constraint qualification by Minchenko and Stakhovski that was called RCRCQ. We show that RCPLD is enough to ensure the convergence of an augmented Lagrangian algorithm and that it asserts the validity of an error bound. We also provide proofs and counter-examples that show the relations of RCRCQ and RCPLD with other known constraint qualifications. In particular, RCPLD is strictly weaker than CPLD and RCRCQ, while still stronger than Abadie's constraint qualification. We also verify that the second order necessary optimality condition holds under RCRCQ.

PRONEXOptimization

PRONEX-Optimization [PRONEX-CNPq/FAPERJ E-26/171.510/2006-APQ1]

Fapesp [2006/53768-0, 2009/09414-7]

FAPESP

CNPq [300900/2009-0, 303030/2007-0, 474138/2008-9]

CNPq

Identificador

MATHEMATICAL PROGRAMMING, NEW YORK, v. 135, n. 41306, supl., Part 3, pp. 255-273, OCT, 2012

0025-5610

http://www.producao.usp.br/handle/BDPI/34441

10.1007/s10107-011-0456-0

http://dx.doi.org/10.1007/s10107-011-0456-0

Idioma(s)

eng

Publicador

SPRINGER

NEW YORK

Relação

MATHEMATICAL PROGRAMMING

Direitos

restrictedAccess

Copyright SPRINGER

Palavras-Chave #NONLINEAR PROGRAMMING #CONSTRAINT QUALIFICATIONS #AUGMENTED LAGRANGIAN #ERROR BOUND PROPERTY #AUGMENTED LAGRANGIAN-METHODS #LOWER-LEVEL CONSTRAINTS #OPTIMALITY #COMPUTER SCIENCE, SOFTWARE ENGINEERING #OPERATIONS RESEARCH & MANAGEMENT SCIENCE #MATHEMATICS, APPLIED
Tipo

article

original article

publishedVersion