On the Application of Iterative Methods of Nondifferentiable Optimization to Some Problems of Approximation Theory

We consider the data fitting problem, that is, the problem of approximating a function of several variables, given by tabulated data, and the corresponding problem for inconsistent (overdetermined) systems of linear algebraic equations. Such problems, connected with measurement of physical quantitie...

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Main Author: Stefan M. Stefanov
Format: Article
Language:English
Published: Hindawi Limited 2014-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2014/165701
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spelling doaj-25df2d75618048ec9818b37101eb34fb2020-11-24T23:24:12ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472014-01-01201410.1155/2014/165701165701On the Application of Iterative Methods of Nondifferentiable Optimization to Some Problems of Approximation TheoryStefan M. Stefanov0Department of Informatics, South-West University “Neofit Rilski”, 2700 Blagoevgrad, BulgariaWe consider the data fitting problem, that is, the problem of approximating a function of several variables, given by tabulated data, and the corresponding problem for inconsistent (overdetermined) systems of linear algebraic equations. Such problems, connected with measurement of physical quantities, arise, for example, in physics, engineering, and so forth. A traditional approach for solving these two problems is the discrete least squares data fitting method, which is based on discrete l2-norm. In this paper, an alternative approach is proposed: with each of these problems, we associate a nondifferentiable (nonsmooth) unconstrained minimization problem with an objective function, based on discrete l1- and/or l∞-norm, respectively; that is, these two norms are used as proximity criteria. In other words, the problems under consideration are solved by minimizing the residual using these two norms. Respective subgradients are calculated, and a subgradient method is used for solving these two problems. The emphasis is on implementation of the proposed approach. Some computational results, obtained by an appropriate iterative method, are given at the end of the paper. These results are compared with the results, obtained by the iterative gradient method for the corresponding “differentiable” discrete least squares problems, that is, approximation problems based on discrete l2-norm.http://dx.doi.org/10.1155/2014/165701
collection DOAJ
language English
format Article
sources DOAJ
author Stefan M. Stefanov
spellingShingle Stefan M. Stefanov
On the Application of Iterative Methods of Nondifferentiable Optimization to Some Problems of Approximation Theory
Mathematical Problems in Engineering
author_facet Stefan M. Stefanov
author_sort Stefan M. Stefanov
title On the Application of Iterative Methods of Nondifferentiable Optimization to Some Problems of Approximation Theory
title_short On the Application of Iterative Methods of Nondifferentiable Optimization to Some Problems of Approximation Theory
title_full On the Application of Iterative Methods of Nondifferentiable Optimization to Some Problems of Approximation Theory
title_fullStr On the Application of Iterative Methods of Nondifferentiable Optimization to Some Problems of Approximation Theory
title_full_unstemmed On the Application of Iterative Methods of Nondifferentiable Optimization to Some Problems of Approximation Theory
title_sort on the application of iterative methods of nondifferentiable optimization to some problems of approximation theory
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1024-123X
1563-5147
publishDate 2014-01-01
description We consider the data fitting problem, that is, the problem of approximating a function of several variables, given by tabulated data, and the corresponding problem for inconsistent (overdetermined) systems of linear algebraic equations. Such problems, connected with measurement of physical quantities, arise, for example, in physics, engineering, and so forth. A traditional approach for solving these two problems is the discrete least squares data fitting method, which is based on discrete l2-norm. In this paper, an alternative approach is proposed: with each of these problems, we associate a nondifferentiable (nonsmooth) unconstrained minimization problem with an objective function, based on discrete l1- and/or l∞-norm, respectively; that is, these two norms are used as proximity criteria. In other words, the problems under consideration are solved by minimizing the residual using these two norms. Respective subgradients are calculated, and a subgradient method is used for solving these two problems. The emphasis is on implementation of the proposed approach. Some computational results, obtained by an appropriate iterative method, are given at the end of the paper. These results are compared with the results, obtained by the iterative gradient method for the corresponding “differentiable” discrete least squares problems, that is, approximation problems based on discrete l2-norm.
url http://dx.doi.org/10.1155/2014/165701
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