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JOURNALS // Zhurnal Vychislitel'noi Matematiki i Matematicheskoi Fiziki // Archive

Zh. Vychisl. Mat. Mat. Fiz., 2013 Volume 53, Number 8, Pages 1249–1271 (Mi zvmmf9898)

This article is cited in 5 papers

Sequential stable Kuhn–Tucker theorem in nonlinear programming

A. V. Kanatov, M. I. Sumin

N. I. Lobachevski State University of Nizhni Novgorod

Abstract: A general parametric nonlinear mathematical programming problem with an operator equality constraint and a finite number of functional inequality constraints is considered in a Hilbert space. Elements of a minimizing sequence for this problem are formally constructed from elements of minimizing sequences for its augmented Lagrangian with values of dual variables chosen by applying the Tikhonov stabilization method in the course of solving the corresponding modified dual problem. A sequential Kuhn–Tucker theorem in nondifferential form is proved in terms of minimizing sequences and augmented Lagrangians. The theorem is stable with respect to errors in the initial data and provides a necessary and sufficient condition on the elements of a minimizing sequence. It is shown that the structure of the augmented Lagrangian is a direct consequence of the generalized differentiability properties of the value function in the problem. The proof is based on a “nonlinear” version of the dual regularization method, which is substantiated in this paper. An example is given illustrating that the formal construction of a minimizing sequence is unstable without regularizing the solution of the modified dual problem.

Key words: nonlinear programming, parametric problem, sequential optimization, minimizing sequence, Lagrange principle, Kuhn–Tucker theorem in nondifferential form, proximal subgradient, augmented Lagrangian, duality, regularization, perturbation method.

UDC: 519.626

Received: 13.03.2013

DOI: 10.7868/S0044466913080085


 English version:
Computational Mathematics and Mathematical Physics, 2013, 53:8, 1078–1098

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