Variable Projection (VarPro) is a framework to solve op- timization problems efficiently by optimally eliminating a subset of the unknowns. It is in particular adapted for Separable Nonlinear Least Squares (SNLS) problems, a class of optimization problems including low-rank matrix factorization with missing data and affine bundle adjustment as instances. VarPro-based methods have received much attention over the last decade due to the experimentally observed large convergence basin for certain problem classes, where they have a clear advantage over standard methods based on Joint optimization over all unknowns. Yet no clear answers have been found in the literature as to why VarPro outperforms others and why Joint optimization, which has be...
The multiexponential analysis problem of fitting kinetic models to time-resolved spectra is often so...
This paper is focused on the solution of the blind deconvolution problem, here modeled as a separabl...
This work addresses the problem of regularized linear least squares (RLS) with non-quadratic separab...
Variable Projection (VarPro) is a framework to solve optimization problems efficiently by optimally ...
Consider the separable nonlinear least squares problem of finding ~a in R^n and ~alpha in R^k which,...
Abstract — In numerical linear algebra, the variable projec-tion (VP) algorithm has been a standard ...
For separable nonlinear least squares models, a variable projection algorithm based on matrix factor...
A regression problem is separable if the model can be represented as a linear combination of functio...
AbstractAn application in magnetic resonance spectroscopy quantification models a signal as a linear...
In this work, we combine the special structure of the separable nonlinear least squares problem with...
The paper presents a solution for efficiently and accurately solving separable least squares problem...
Low rank inducing penalties have been proven to successfully uncover fundamental structures consider...
Variable projection solves structured optimization problems by completely minimizing over a subset o...
Matrix factorization (or low-rank matrix completion) with missing data is a key computation in many ...
Matrix factorization (or low-rank matrix completion) with missing data is a key computation in many ...
The multiexponential analysis problem of fitting kinetic models to time-resolved spectra is often so...
This paper is focused on the solution of the blind deconvolution problem, here modeled as a separabl...
This work addresses the problem of regularized linear least squares (RLS) with non-quadratic separab...
Variable Projection (VarPro) is a framework to solve optimization problems efficiently by optimally ...
Consider the separable nonlinear least squares problem of finding ~a in R^n and ~alpha in R^k which,...
Abstract — In numerical linear algebra, the variable projec-tion (VP) algorithm has been a standard ...
For separable nonlinear least squares models, a variable projection algorithm based on matrix factor...
A regression problem is separable if the model can be represented as a linear combination of functio...
AbstractAn application in magnetic resonance spectroscopy quantification models a signal as a linear...
In this work, we combine the special structure of the separable nonlinear least squares problem with...
The paper presents a solution for efficiently and accurately solving separable least squares problem...
Low rank inducing penalties have been proven to successfully uncover fundamental structures consider...
Variable projection solves structured optimization problems by completely minimizing over a subset o...
Matrix factorization (or low-rank matrix completion) with missing data is a key computation in many ...
Matrix factorization (or low-rank matrix completion) with missing data is a key computation in many ...
The multiexponential analysis problem of fitting kinetic models to time-resolved spectra is often so...
This paper is focused on the solution of the blind deconvolution problem, here modeled as a separabl...
This work addresses the problem of regularized linear least squares (RLS) with non-quadratic separab...