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JOURNALS // Trudy Instituta Matematiki i Mekhaniki UrO RAN // Archive

Trudy Inst. Mat. i Mekh. UrO RAN, 2024 Volume 30, Number 2, Pages 203–221 (Mi timm2094)

This article is cited in 1 paper

The perturbation method and a regularization of the Lagrange multiplier rule in convex problems for constrained extremum

M. I. Sumin

Tambov State University named after G.R. Derzhavin

Abstract: We consider a regularization of the Lagrange multiplier rule (LMR) in the nondifferential form in a convex problem for constrained extremum with an operator equality-constraint in a Hilbert space and a finite number of functional inequality-constraints. The objective functional of the problem is assumed to be strongly convex, and the convex closed set of its admissible elements also belongs to a Hilbert space. The constraints of the problem contain additively included parameters, which makes it possible to use the so-called perturbation method to study it. The main purpose of the regularized LMR is the stable generation of generalized minimizing sequences (GMSs), which approximate the exact solution of the problem using extremals of the regular Lagrange functional. The regularized LMR itself can be interpreted as a GMS-generating (regularizing) operator, which assigns to each set of input data of the constrained extremum problem the extremal of its corresponding regular Lagrange functional, in which the dual variable is generated in accordance with one or another procedure for stabilizing the dual problem. The main attention is paid to: (1) studying the connection between the dual regularization procedure and the subdifferential properties of the value function of the original problem; 2) proving the convergence of this procedure in the case of solvability of the dual problem; (3) an appropriate update of the regularized LMR; (4) obtaining the classical LMR as a limiting version of its regularized analog.

Keywords: convex problem for constrained extremum, Lagrange multiplier rule, regularization, perturbation method, value function, subdifferential, dual problem, generalized minimizing sequence, regularizing algorithm.

UDC: 517.9

MSC: 49K27, 49N15, 47A52, 90C46, 90C25

Received: 10.02.2024
Revised: 28.02.2024
Accepted: 04.03.2024

DOI: 10.21538/0134-4889-2024-30-2-203-221


 English version:
Proceedings of the Steklov Institute of Mathematics (Supplementary issues), 2024, 325, suppl. 1, S194–S211

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© Steklov Math. Inst. of RAS, 2025