2021
DOI: 10.48550/arxiv.2105.07221
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Computational methods for large-scale inverse problems: a survey on hybrid projection methods

Julianne Chung,
Silvia Gazzola

Abstract: This paper surveys an important class of methods that combine iterative projection methods and variational regularization methods for large-scale inverse problems. Iterative methods such as Krylov subspace methods are invaluable in the numerical linear algebra community and have proved important in solving inverse problems due to their inherent regularizing properties and their ability to handle large-scale problems. Variational regularization describes a broad and important class of methods that are used to o… Show more

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Cited by 1 publication
(2 citation statements)
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References 177 publications
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“…These are iterative methods, where each iteration requires the expansion of the solution subspace, the estimation of the regularization parameter(s), and the solution of a projected, regularized problem. We point the interested reader to survey papers (Chung and Gazzola, 2021;Gazzola and Sabaté Landman, 2020). In Chung and Saibaba (2017), gen-HyBR methods were developed for computing Tikhonovregularized solutions to problems where explicit computations of the square root and inverse of the prior covariance matrix are not feasible.…”
Section: Generalized Hybrid Projection Methods For Aimmentioning
confidence: 99%
See 1 more Smart Citation
“…These are iterative methods, where each iteration requires the expansion of the solution subspace, the estimation of the regularization parameter(s), and the solution of a projected, regularized problem. We point the interested reader to survey papers (Chung and Gazzola, 2021;Gazzola and Sabaté Landman, 2020). In Chung and Saibaba (2017), gen-HyBR methods were developed for computing Tikhonovregularized solutions to problems where explicit computations of the square root and inverse of the prior covariance matrix are not feasible.…”
Section: Generalized Hybrid Projection Methods For Aimmentioning
confidence: 99%
“…Thus, we let λ k be the regularization parameter estimated for the projected problem at the kth iteration, such that D proj (λ k ) ≤ τ m. Then, as the number of iterations k increases, the estimated DP regularization parameter for the projected problem becomes a better approximation of the DP parameter for the original problem. The advantage of this approach is two-fold: the regularization parameter is selected adaptively (i.e., each iteration can have a different regularization parameter), and the cost of parameter selection is cheap (O(k 3 ) flops) since we work with small matrices of size (k+1)×k and k is much smaller than m and n. Furthermore, there are various theoretical results that show that selecting the regularization parameter for the projected problem (i.e., project then regularize) is equivalent to first estimating the regularization parameter and then using an iterative projection method (i.e., regularize then project) (Chung and Gazzola, 2021).…”
Section: Regularization Parameter Estimation Methodsmentioning
confidence: 99%