2024
DOI: 10.1093/imaiai/iaae013
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A theory of optimal convex regularization for low-dimensional recovery

Yann Traonmilin,
Rémi Gribonval,
Samuel Vaiter

Abstract: We consider the problem of recovering elements of a low-dimensional model from under-determined linear measurements. To perform recovery, we consider the minimization of a convex regularizer subject to a data fit constraint. Given a model, we ask ourselves what is the ‘best’ convex regularizer to perform its recovery. To answer this question, we define an optimal regularizer as a function that maximizes a compliance measure with respect to the model. We introduce and study several notions of compliance. We giv… Show more

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