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The $L_q$-weighted dual programming of the linear Chebyshev approximation and an interior-point method

Authors :
Yang, Linyi
Zhang, Lei-Hong
Zhang, Ya-Nan
Publication Year :
2023

Abstract

Given samples of a real or complex-valued function on a set of distinct nodes, the traditional linear Chebyshev approximation is to compute the best minimax approximation on a prescribed linear functional space. Lawson's iteration is a classical and well-known method for that task. However, Lawson's iteration converges linearly and in many cases, the convergence is very slow. In this paper, by the duality theory of linear programming, we first provide an elementary and self-contained proof for the well-known Alternation Theorem in the real case. Also, relying upon the Lagrange duality, we further establish an $L_q$-weighted dual programming for the linear Chebyshev approximation. In this framework, we revisit the convergence of Lawson's iteration, and moreover, propose a Newton type iteration, the interior-point method, to solve the $L_2$-weighted dual programming. Numerical experiments are reported to demonstrate its fast convergence and its capability in finding the reference points that characterize the unique minimax approximation.<br />Comment: 29 pages, 8 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2308.07636
Document Type :
Working Paper