Higher order convergence rates for Bregman iterated variational regularization of inverse problems
Benjamin Sprung, Thorsten Hohage

TL;DR
This paper introduces high-order variational source conditions for Bregman iterated regularization, achieving optimal convergence rates in Banach spaces for inverse problems with noise tending to zero.
Contribution
It develops arbitrarily high order variational source conditions that enable higher convergence rates for Bregman iterated regularization in Banach spaces.
Findings
Derived convergence rates under third order VSC.
Interpreted VSCs in terms of Besov spaces for entropy regularization.
Confirmed theoretical results with numerical experiments.
Abstract
We study the convergence of variationally regularized solutions to linear ill-posed operator equations in Banach spaces as the noise in the right hand side tends to . The rate of this convergence is determined by abstract smoothness conditions on the solution called source conditions. For non-quadratic data fidelity or penalty terms such source conditions are often formulated in the form of variational inequalities. Such variational source conditions (VSCs) as well as other formulations of such conditions in Banach spaces have the disadvantage of yielding only low-order convergence rates. A first step towards higher order VSCs has been taken by Grasmair (2013) who obtained convergence rates up to the saturation of Tikhonov regularization. For even higher order convergence rates, iterated versions of variational regularization have to be considered. In this paper we introduce VSCs of…
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