The Convex Geometry of Linear Inverse Problems
Venkat Chandrasekaran, Benjamin Recht, Pablo A. Parrilo, Alan S., Willsky

TL;DR
This paper introduces a convex geometric framework for solving ill-posed linear inverse problems by leveraging atomic norms to promote simple models, providing sharp measurement bounds for exact and robust recovery.
Contribution
It generalizes the concept of atomic norms to a wide class of structured models, enabling convex optimization solutions for diverse inverse problems.
Findings
Atomic norm minimization aids in recovering structured models from limited data.
Sharp measurement bounds are derived based on Gaussian widths of tangent cones.
Semidefinite programming approximations facilitate solving complex atomic norm problems.
Abstract
In applications throughout science and engineering one is often faced with the challenge of solving an ill-posed inverse problem, where the number of available measurements is smaller than the dimension of the model to be estimated. However in many practical situations of interest, models are constrained structurally so that they only have a few degrees of freedom relative to their ambient dimension. This paper provides a general framework to convert notions of simplicity into convex penalty functions, resulting in convex optimization solutions to linear, underdetermined inverse problems. The class of simple models considered are those formed as the sum of a few atoms from some (possibly infinite) elementary atomic set; examples include well-studied cases such as sparse vectors and low-rank matrices, as well as several others including sums of a few permutations matrices, low-rank…
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