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Russian Journal of Nonlinear Dynamics, 2024, Volume 20, Number 5, Pages 727–745
DOI: https://doi.org/10.20537/nd241207
(Mi nd920)
 

NONLINEAR SYSTEMS IN ROBOTICS

Mirror Descent Methods with a Weighting Scheme for Outputs for Optimization Problems with Functional Constraints

M. S. Alkousaab, F. S. Stonyakinabc, A. M. Abdod, M. M. Alcheikhd

a Innopolis University, ul. Universitetskaya 1, Innopolis, 420500 Russia
b Moscow Institute of Physics and Technology, Institutskiy per. 9, Dolgoprudny, 141701 Russia
c V. I. Vernadsky Crimean Federal University, Av. Academician Vernandsky 4, Simferopol, 295007 Russia
d Damascus University, Mathematics Department, Faculty of Science, Damascus, Syria
References:
Abstract: This paper is devoted to new mirror descent-type methods with switching between two types of iteration points (productive and nonproductive) for constrained convex optimization problems with several convex functional (inequality-type) constraints. We propose two methods (a standard one and its modification) with a new weighting scheme for points in each iteration of methods, which assigns smaller weights to the initial points and larger weights to the most recent points. Thus, as a result, it improves the convergence rate of the proposed methods (empirically). The proposed modification makes it possible to reduce the running time of the method due to skipping some of the functional constraints at nonproductive steps. We derive bounds for the convergence rate of the proposed methods with time-varying step sizes, which show that the proposed methods are optimal from the viewpoint of lower oracle estimates. The results of some numerical experiments, which illustrate the advantages of the proposed methods for some examples, such as the best approximation problem, the Fermat – Torricelli – Steiner problem, the smallest covering ball problem, and the maximum of a finite collection of linear functions, are also presented.
Keywords: convex optimization, nonsmooth problem, problem with functional constraints, mirror descent, optimal convergence rate
Funding agency Grant number
Ministry of Science and Higher Education of the Russian Federation FSMG-2024-0011
The research is supported by the Ministry of Science and Higher Education of the Russian Federation (Goszadaniye), project No. FSMG-2024-0011.
Received: 29.10.2024
Accepted: 02.12.2024
Document Type: Article
Language: English
Citation: M. S. Alkousa, F. S. Stonyakin, A. M. Abdo, M. M. Alcheikh, “Mirror Descent Methods with a Weighting Scheme for Outputs for Optimization Problems with Functional Constraints”, Rus. J. Nonlin. Dyn., 20:5 (2024), 727–745
Citation in format AMSBIB
\Bibitem{AlkStoAbd24}
\by M. S. Alkousa, F. S. Stonyakin, A.~M.~Abdo, M.~M.~Alcheikh
\paper Mirror Descent Methods with a Weighting Scheme for Outputs for Optimization Problems with Functional Constraints
\jour Rus. J. Nonlin. Dyn.
\yr 2024
\vol 20
\issue 5
\pages 727--745
\mathnet{http://mi.mathnet.ru/nd920}
\crossref{https://doi.org/10.20537/nd241207}
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