| Literature DB >> 26778868 |
Abstract
In this paper we take a novel approach to the regularization of underdetermined linear systems. Typically, a prior distribution is imposed on the unknown to hopefully force a sparse solution, which often relies on uniqueness of the regularized solution (something which is typically beyond our control) to work as desired. But here we take a direct approach, by imposing the requirement that the system takes on a unique solution. Then we seek a minimal residual for which this uniqueness requirement holds. When applied to systems with non-negativity constraints or forms of regularization for which sufficient sparsity is a requirement for uniqueness, this approach necessarily gives a sparse result. The approach is based on defining a metric of distance to uniqueness for the system, and optimizing an adjustment that drives this distance to zero. We demonstrate the performance of the approach with numerical experiments.Entities:
Keywords: Convex optimization; Non-negativity; Regularization; Sparsity; Underdetermined linear systems; Uniqueness
Year: 2016 PMID: 26778868 PMCID: PMC4710964 DOI: 10.1016/j.sigpro.2015.12.009
Source DB: PubMed Journal: Signal Processing ISSN: 0165-1684 Impact factor: 4.662