Abstract
In this articlewe propose and study the properties of three distinct algorithmsfor obtaining stable approximate solutions for systems of ill-posed equations,modeled by linear operators acting between Hilbert spaces. Based on Tikhonov-like methods with uniformly convex penalty terms, we develop new versions with inexact minimization of both one step and iterated-Tikhonov methods. For the case of one step methods, we propose two distinct algorithms, one based in a priori and one based in a posteriori choice of the regularization parameter. Convergence and stability properties are provided, as well as optimal convergence rates (under appropriate source conditions). The third algorithm is based in a variant of the iterated-Tikhonov method with a posteriori choice of the sequence of penalization parameters. For this algorithm, we prove stability for noisy data and the regularization property.
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CITATION STYLE
Margotti, F., & Rabelo, J. (2020). Tikhonov-like methods with inexact minimization for solving linear ill-posed problems. Inverse Problems, 36(12). https://doi.org/10.1088/1361-6420/abc66c
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