Convergence analysis of Tikhonov regularization for non-linear statistical inverse problems

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Date
2020
Volume
14
Issue
2
Journal
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Publisher
Ithaca, NY : Cornell University Library
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Abstract

We study a non-linear statistical inverse problem, where we observe the noisy image of a quantity through a non-linear operator at some random design points. We consider the widely used Tikhonov regularization (or method of regularization) approach to estimate the quantity for the non-linear ill-posed inverse problem. The estimator is defined as the minimizer of a Tikhonov functional, which is the sum of a data misfit term and a quadratic penalty term. We develop a theoretical analysis for the minimizer of the Tikhonov regularization scheme using the concept of reproducing kernel Hilbert spaces. We discuss optimal rates of convergence for the proposed scheme, uniformly over classes of admissible solutions, defined through appropriate source conditions.

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Keywords
General source condition, Mini-max convergence rates, Reproducing kernel Hilbert space, Statistical inverse problem, Tikhonov regular-ization
Citation
Rastogi, A., Blanchard, G., & Mathé, P. (2020). Convergence analysis of Tikhonov regularization for non-linear statistical inverse problems. 14(2). https://doi.org//10.1214/20-EJS1735
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CC BY 4.0 Unported