Calmness of the argmin mapping in linear semi-infinite optimization

M.J. Cánovas; A. Hantoute; J. Parra; J. Toledo

Keywords: linear programming, variational analysis, Calmness, Semi-infinite programming, Local error bounds

Abstract

This paper characterizes the calmness property of the argmin mapping in the framework of linear semi-infinite optimization problems under canonical perturbations; i.e., continuous perturbations of the right-hand side of the constraints (inequalities) together with perturbations of the objective function coefficient vector. This characterization is new for semi-infinite problems without requiring uniqueness of minimizers. For ordinary (finitely constrained) linear programs, the calmness of the argmin mapping always holds, since its graph is piecewise polyhedral (as a consequence of a classical result by Robinson). Moreover, the so-called isolated calmness (corresponding to the case of unique optimal solution for the nominal problem) has been previously characterized. As a key tool in this paper, we appeal to a certain supremum function associated with our nominal problem, not involving problems in a neighborhood, which is related to (sub)level sets. The main result establishes that, under Slater constraint qualification, perturbations of the objective function are negligible when characterizing the calmness of the argmin mapping. This result also states that the calmness of the argmin mapping is equivalent to the calmness of the level set mapping.

Más información

Volumen: 160
Número: 1
Fecha de publicación: 2013
Página de inicio: 111
Página final: 126
Idioma: English
Financiamiento/Sponsor: Grant MTM2011-29064-C03-03 from MINECO, Spain; Fondecyt Project No 1110019, ECOS-Conicyt project No C10E08, and Math-Amsud No. 13MATH-01 2013
DOI:

DOI 10.1007/s10957-013-0371-z

Notas: Journal of Optimization Theory and Applications is an ISI JOURNAL.