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arxiv: 2506.17465 · v2 · pith:2NEWD52Ynew · submitted 2025-06-20 · 🧮 math.OC

Regularization of Nonlinear Inverse Problems -- From Functional Analysis to Data-Driven Approaches

classification 🧮 math.OC
keywords inverseproblemsemphanalysisdata-drivennonlinearregularizationacross
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The focus of this book is on the analysis of regularization methods for solving \emph{nonlinear inverse problems}. Specifically, we place a strong emphasis on techniques that incorporate supervised or unsupervised data derived from prior experiments. This approach enables the integration of data-driven insights into the solution of inverse problems governed by physical models. \emph{Inverse problems}, in general, aim to uncover the \emph{inner mechanisms} of an observed system based on indirect or incomplete measurements. This field has far-reaching applications across various disciplines, such as medical or geophysical imaging, as well as, more broadly speaking, industrial processes where identifying hidden parameters is essential.

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  1. Neural operators for solving nonlinear inverse problems

    math.NA 2025-08 unverdicted novelty 5.0

    Tikhonov regularization is analyzed using neural operators as learned surrogates for ill-posed nonlinear operator equations, with error balancing and approximation results extended to Sobolev and Lebesgue spaces.