A Method for Transforming Non-Convex Optimization Problem to Distributed Form

We propose a novel distributed method for non-convex optimization problems with coupling equality and inequality constraints. This method transforms the optimization problem into a specific form to allow distributed implementation of modified gradient descent and Newton’s methods so that they operat...

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Published in:Mathematics
Main Authors: Oleg O. Khamisov, Oleg V. Khamisov, Todor D. Ganchev, Eugene S. Semenkin
Format: Article
Language:English
Published: MDPI AG 2024-09-01
Subjects:
Online Access:https://www.mdpi.com/2227-7390/12/17/2796
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author Oleg O. Khamisov
Oleg V. Khamisov
Todor D. Ganchev
Eugene S. Semenkin
author_facet Oleg O. Khamisov
Oleg V. Khamisov
Todor D. Ganchev
Eugene S. Semenkin
author_sort Oleg O. Khamisov
collection DOAJ
container_title Mathematics
description We propose a novel distributed method for non-convex optimization problems with coupling equality and inequality constraints. This method transforms the optimization problem into a specific form to allow distributed implementation of modified gradient descent and Newton’s methods so that they operate as if they were distributed. We demonstrate that for the proposed distributed method: (i) communications are significantly less time-consuming than oracle calls, (ii) its convergence rate is equivalent to the convergence of Newton’s method concerning oracle calls, and (iii) for the cases when oracle calls are more expensive than communication between agents, the transition from a centralized to a distributed paradigm does not significantly affect computational time. The proposed method is applicable when the objective function is twice differentiable and constraints are differentiable, which holds for a wide range of machine learning methods and optimization setups.
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spelling doaj-art-e125d1fd82ba4d6bbf573a01337fe76f2025-08-19T23:22:05ZengMDPI AGMathematics2227-73902024-09-011217279610.3390/math12172796A Method for Transforming Non-Convex Optimization Problem to Distributed FormOleg O. Khamisov0Oleg V. Khamisov1Todor D. Ganchev2Eugene S. Semenkin3Depertment of Applied Mathematics, Melentiev Energy Systems Institute, 664033 Irkutsk, RussiaDepertment of Applied Mathematics, Melentiev Energy Systems Institute, 664033 Irkutsk, RussiaDepartment of Computer Science and Engineering, Technical University of Varna, 9010 Varna, BulgariaScientific and Educational Center “Artificial Intelligence Technologies”, Baumann Moscow State Technical University, 105005 Moscow, RussiaWe propose a novel distributed method for non-convex optimization problems with coupling equality and inequality constraints. This method transforms the optimization problem into a specific form to allow distributed implementation of modified gradient descent and Newton’s methods so that they operate as if they were distributed. We demonstrate that for the proposed distributed method: (i) communications are significantly less time-consuming than oracle calls, (ii) its convergence rate is equivalent to the convergence of Newton’s method concerning oracle calls, and (iii) for the cases when oracle calls are more expensive than communication between agents, the transition from a centralized to a distributed paradigm does not significantly affect computational time. The proposed method is applicable when the objective function is twice differentiable and constraints are differentiable, which holds for a wide range of machine learning methods and optimization setups.https://www.mdpi.com/2227-7390/12/17/2796distributed optimizationnon-convex optimizationgradient descentNewton’s method
spellingShingle Oleg O. Khamisov
Oleg V. Khamisov
Todor D. Ganchev
Eugene S. Semenkin
A Method for Transforming Non-Convex Optimization Problem to Distributed Form
distributed optimization
non-convex optimization
gradient descent
Newton’s method
title A Method for Transforming Non-Convex Optimization Problem to Distributed Form
title_full A Method for Transforming Non-Convex Optimization Problem to Distributed Form
title_fullStr A Method for Transforming Non-Convex Optimization Problem to Distributed Form
title_full_unstemmed A Method for Transforming Non-Convex Optimization Problem to Distributed Form
title_short A Method for Transforming Non-Convex Optimization Problem to Distributed Form
title_sort method for transforming non convex optimization problem to distributed form
topic distributed optimization
non-convex optimization
gradient descent
Newton’s method
url https://www.mdpi.com/2227-7390/12/17/2796
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