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JOURNALS // Journal of Samara State Technical University, Ser. Physical and Mathematical Sciences // Archive

Vestn. Samar. Gos. Tekhn. Univ., Ser. Fiz.-Mat. Nauki [J. Samara State Tech. Univ., Ser. Phys. Math. Sci.], 2022 Volume 26, Number 2, Pages 311–321 (Mi vsgtu1930)

This article is cited in 3 papers

Mathematical Modeling, Numerical Methods and Software Complexes

Implicit iterative algorithm for solving regularized total least squares problems

D. V. Ivanovab, A. I. Zhdanovc

a Samara National Research University, Samara, 443086, Russian Federation
b Samara State University of Transport, Samara, 443066, Russian Federation
c Samara State Technical University, Samara, 443100, Russian Federation

Abstract: The article considers a new iterative algorithm for solving total least squares problems. A new version of the implicit method of simple iterations based on singular value decomposition is proposed for solving a biased normal system of algebraic equations. The use of the implicit method of simple iterations based on singular value decomposition makes it possible to replace an ill-conditioned problem with a sequence of problems with a smaller condition number. This makes it possible to significantly increase the computational stability of the algorithm and, at the same time, ensures its high rate of convergence. Test examples shown that the proposed algorithm has a higher accuracy compared to the solutions obtained by non-regularized total least squares algorithms, as well as the total least squares solution with Tikhonov regularization.

Keywords: implicit regularization, total least squares, singular value decomposition, ill-conditioning, iterative regularization methods.

UDC: 519.612

MSC: 65F10, 65F22

Received: May 15, 2022
Revised: June 6, 2022
Accepted: June 7, 2022
First online: June 30, 2022

Language: English

DOI: 10.14498/vsgtu1930



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