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On the choice of the regularization parameter in ill-posed problems with approximately given noise level of data

  • U. Hämarik and T. Raus
Published/Copyright: 2006
Journal of Inverse and Ill-posed Problems
From the journal Volume 14 Issue 3

We consider regularization of linear ill-posed problems Au = ƒ in Hilbert spaces. Approximations ur to the solution u* can be constructed by the Tikhonov method or by the Lavrentiev method, by iterative or by other methods. We assume that instead of ƒ ∈ R(A) noisy data are available with the approximately given noise level δ: in process δ → 0 it holds || − ƒ||/δc with unknown constant c. We propose a new a-posteriori rule for the choice of the regularization parameter r = r(δ) guaranteeing ur(δ)u* for δ → 0. Note that such convergence is not guaranteed for the parameter choice given by the L-curve rule, by the GCV-rule, by the quasioptimality criterion and also for discrepancy principle ||Aur|| = with b < c. The error estimates are given, which in case || − ƒ|| ≤ δ are quasioptimal and order-optimal.

Published Online: --
Published in Print: 2006-05-01

Copyright 2006, Walter de Gruyter

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