Mathematics > Optimization and Control
[Submitted on 18 Jul 2022 (v1), last revised 27 Oct 2022 (this version, v2)]
Title:Non-negative Least Squares via Overparametrization
View PDFAbstract:In many applications, solutions of numerical problems are required to be non-negative, e.g., when retrieving pixel intensity values or physical densities of a substance. In this context, non-negative least squares (NNLS) is a ubiquitous tool, e.g., when seeking sparse solutions of high-dimensional statistical problems. Despite vast efforts since the seminal work of Lawson and Hanson in the '70s, the non-negativity assumption is still an obstacle for the theoretical analysis and scalability of many off-the-shelf solvers. In the different context of deep neural networks, we recently started to see that the training of overparametrized models via gradient descent leads to surprising generalization properties and the retrieval of regularized solutions. In this paper, we prove that, by using an overparametrized formulation, NNLS solutions can reliably be approximated via vanilla gradient flow. We furthermore establish stability of the method against negative perturbations of the ground-truth. Our simulations confirm that this allows the use of vanilla gradient descent as a novel and scalable numerical solver for NNLS. From a conceptual point of view, our work proposes a novel approach to trading side-constraints in optimization problems against complexity of the optimization landscape, which does not build upon the concept of Lagrangian multipliers.
Submission history
From: Johannes Maly [view email][v1] Mon, 18 Jul 2022 08:43:42 UTC (1,176 KB)
[v2] Thu, 27 Oct 2022 12:42:42 UTC (3,264 KB)
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