Stochastic Smoothing Methods for Nonsmooth Global Optimization

Abstract. The paper presents the results of testing the stochastic smoothing method for global optimization of a multiextremal function in a convex feasible subset of Euclidean space. Preliminarily, the objective function is extended outside the admissible region so that its global minimum does not...

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Main Author: V.I. Norkin
Format: Article
Language:English
Published: V.M. Glushkov Institute of Cybernetics 2020-03-01
Series:Кібернетика та комп'ютерні технології
Subjects:
Online Access:http://cctech.org.ua/13-vertikalnoe-menyu-en/89-abstract-20-1-1-arte
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spelling doaj-b1e4fe06d2e34d71b625edc4dda945b92021-05-21T19:20:38ZengV.M. Glushkov Institute of CyberneticsКібернетика та комп'ютерні технології2707-45012707-451X2020-03-01151410.34229/2707-451X.20.1.110-34229-2707-451X-20-1-1Stochastic Smoothing Methods for Nonsmooth Global OptimizationV.I. Norkin0https://orcid.org/0000-0003-3255-0405V.M. Glushkov Institute of Cybernetics, Kyiv, UkraineAbstract. The paper presents the results of testing the stochastic smoothing method for global optimization of a multiextremal function in a convex feasible subset of Euclidean space. Preliminarily, the objective function is extended outside the admissible region so that its global minimum does not change, and it becomes coercive. The smoothing of a function at any point is carried out by averaging the values of the function over some neighborhood of this point. The size of the neighborhood is a smoothing parameter. Smoothing eliminates small local extrema of the original function. With a sufficiently large value of the smoothing parameter, the averaged function can have only one minimum. The smoothing method consists in replacing the original function with a sequence of smoothed approximations with vanishing to zero smoothing parameter and optimization of the latter functions by contemporary stochastic optimization methods. Passing from the minimum of one smoothed function to a close minimum of the next smoothed function, we can gradually come to the region of the global minimum of the original function. The smoothing method is also applicable for the optimization of nonsmooth nonconvex functions. It is shown that the smoothing method steadily solves test global optimization problems of small dimensions from the literature.http://cctech.org.ua/13-vertikalnoe-menyu-en/89-abstract-20-1-1-arteglobal optimizationsteklov smoothingaveraged functionsstochastic optimizationnonsmooth nonconvex optimization
collection DOAJ
language English
format Article
sources DOAJ
author V.I. Norkin
spellingShingle V.I. Norkin
Stochastic Smoothing Methods for Nonsmooth Global Optimization
Кібернетика та комп'ютерні технології
global optimization
steklov smoothing
averaged functions
stochastic optimization
nonsmooth nonconvex optimization
author_facet V.I. Norkin
author_sort V.I. Norkin
title Stochastic Smoothing Methods for Nonsmooth Global Optimization
title_short Stochastic Smoothing Methods for Nonsmooth Global Optimization
title_full Stochastic Smoothing Methods for Nonsmooth Global Optimization
title_fullStr Stochastic Smoothing Methods for Nonsmooth Global Optimization
title_full_unstemmed Stochastic Smoothing Methods for Nonsmooth Global Optimization
title_sort stochastic smoothing methods for nonsmooth global optimization
publisher V.M. Glushkov Institute of Cybernetics
series Кібернетика та комп'ютерні технології
issn 2707-4501
2707-451X
publishDate 2020-03-01
description Abstract. The paper presents the results of testing the stochastic smoothing method for global optimization of a multiextremal function in a convex feasible subset of Euclidean space. Preliminarily, the objective function is extended outside the admissible region so that its global minimum does not change, and it becomes coercive. The smoothing of a function at any point is carried out by averaging the values of the function over some neighborhood of this point. The size of the neighborhood is a smoothing parameter. Smoothing eliminates small local extrema of the original function. With a sufficiently large value of the smoothing parameter, the averaged function can have only one minimum. The smoothing method consists in replacing the original function with a sequence of smoothed approximations with vanishing to zero smoothing parameter and optimization of the latter functions by contemporary stochastic optimization methods. Passing from the minimum of one smoothed function to a close minimum of the next smoothed function, we can gradually come to the region of the global minimum of the original function. The smoothing method is also applicable for the optimization of nonsmooth nonconvex functions. It is shown that the smoothing method steadily solves test global optimization problems of small dimensions from the literature.
topic global optimization
steklov smoothing
averaged functions
stochastic optimization
nonsmooth nonconvex optimization
url http://cctech.org.ua/13-vertikalnoe-menyu-en/89-abstract-20-1-1-arte
work_keys_str_mv AT vinorkin stochasticsmoothingmethodsfornonsmoothglobaloptimization
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