Calculus of Variations and Geometric Measure Theory

F. van Maarschalkerwaart - S. Mukherjee - M. S. Landman - C. Brune - M. Carioni

Perturbation-Aware Distributionally Robust Optimization for Inverse Problems

created by carioni on 21 Mar 2025
modified on 14 Apr 2025

[BibTeX]

Accepted Paper

Inserted: 21 mar 2025
Last Updated: 14 apr 2025

Journal: SSVM 2025
Year: 2025

ArXiv: 2503.04646 PDF

Abstract:

This paper builds on classical distributionally robust optimization techniques to construct a comprehensive framework that can be used for solving inverse problems. Given an estimated distribution of inputs in $X$ and outputs in $Y$, an ambiguity set is constructed by collecting all the perturbations that belong to a prescribed set $K$ and are inside an entropy-regularized Wasserstein ball. By finding the worst-case reconstruction within $K$ one can produce reconstructions that are robust with respect to various types of perturbations: $X$-robustness, $Y\vert X$-robustness and, more general, targeted robustness depending on noise type, imperfect forward operators and noise anisotropies. After defining the general robust optimization problem, we derive its (weak) dual formulation and we use it to design an efficient algorithm. Finally, we demonstrate the effectiveness of our general framework to solve matrix inversion and deconvolution problems defining $K$ as the set of multivariate Gaussian perturbations in $Y \vert X$.


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