4.2 Article Proceedings Paper

A unified approach to convergence rates for l1-regularization and lacking sparsity

Journal

JOURNAL OF INVERSE AND ILL-POSED PROBLEMS
Volume 24, Issue 2, Pages 139-148

Publisher

WALTER DE GRUYTER GMBH
DOI: 10.1515/jiip-2015-0058

Keywords

Linear ill-posed problems; Tikhonov-type regularization; sparsity constraints; convergence rates; variational inequalities; restricted isometry property

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In l(1)-regularization, which is an important tool in signal and image processing, one usually is concerned with signals and images having a sparse representation in some suitable basis, e.g., in awavelet basis. Many results on convergence and convergence rates of sparse approximate solutions to linear ill-posed problems are known, but rate results for the l(1)-regularization in case of lacking sparsity had not been published until 2013. In the last two years, however, two articles appeared providing sufficient conditions for convergence rates in case of non-sparse but almost sparse solutions. In the present paper, we suggest a third sufficient condition, which unifies the existing two and, by the way, also incorporates the well-known restricted isometry property.

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