2023
DOI: 10.1007/s10444-023-10020-8
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Limited memory restarted ℓp-ℓq minimization methods using generalized Krylov subspaces

Abstract: Regularization of certain linear discrete ill-posed problems, as well as of certain regression problems, can be formulated as large-scale, possibly nonconvex, minimization problems, whose objective function is the sum of the p th power of the ℓp-norm of a fidelity term and the q th power of the ℓq-norm of a regularization term, with 0 < p,q ≤ 2. We describe new restarted iterative solution methods that require less computer storage and execution time than the methods described by Huang et al. (BIT Numer. Ma… Show more

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Cited by 4 publications
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