The multiexponential analysis problem of fitting kinetic models to time-resolved spectra is often solved using gradient-based algorithms that treat the spectral parameters as conditionally linear. We make a comparison of the two most-applied such algorithms, alternating least squares and variable projection. A numerical study examines computational efficiency and linear approximation standard error estimates. A new derivation of the Fisher information matrix under the full Golub-Pereyra gradient allows a numerical comparison of parameter precision under variable projection variants. Under the criteria of efficiency, quality of standard error estimates and parameter precision, we conclude that the Kaufman variable projection technique perfor...
A comparison between the full Newton-type optimization NL2SNO, the Levenberg-Marquardt method with t...
A comparison between the full Newton-type optimization NL2SNO, the Levenberg-Marquardt method with t...
Variable Projection (VarPro) is a framework to solve op- timization problems efficiently by optimall...
The multiexponential analysis problem of fitting kinetic models to time-resolved spectra is often so...
The multiexponential analysis problem of fitting kinetic models to time-resolved spectra is often so...
The multiexponential analysis problem of fitting kinetic models to time-resolved spectra is often so...
For separable nonlinear least squares models, a variable projection algorithm based on matrix factor...
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...
Abstract — In numerical linear algebra, the variable projec-tion (VP) algorithm has been a standard ...
Nonlinear dynamic models are widely used for characterizing processes that govern complex biological...
Consider the separable nonlinear least squares problem of finding ~a in R^n and ~alpha in R^k which,...
TIMP is an R package for modeling multiway spectroscopic measurements. The pack-age allows for the s...
In computational science it is common to describe dynamic systems by mathematical models in forms of...
In computational science it is common to describe dynamic systems by mathematical models in forms of...
A comparison between the full Newton-type optimization NL2SNO, the Levenberg-Marquardt method with t...
A comparison between the full Newton-type optimization NL2SNO, the Levenberg-Marquardt method with t...
Variable Projection (VarPro) is a framework to solve op- timization problems efficiently by optimall...
The multiexponential analysis problem of fitting kinetic models to time-resolved spectra is often so...
The multiexponential analysis problem of fitting kinetic models to time-resolved spectra is often so...
The multiexponential analysis problem of fitting kinetic models to time-resolved spectra is often so...
For separable nonlinear least squares models, a variable projection algorithm based on matrix factor...
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...
Abstract — In numerical linear algebra, the variable projec-tion (VP) algorithm has been a standard ...
Nonlinear dynamic models are widely used for characterizing processes that govern complex biological...
Consider the separable nonlinear least squares problem of finding ~a in R^n and ~alpha in R^k which,...
TIMP is an R package for modeling multiway spectroscopic measurements. The pack-age allows for the s...
In computational science it is common to describe dynamic systems by mathematical models in forms of...
In computational science it is common to describe dynamic systems by mathematical models in forms of...
A comparison between the full Newton-type optimization NL2SNO, the Levenberg-Marquardt method with t...
A comparison between the full Newton-type optimization NL2SNO, the Levenberg-Marquardt method with t...
Variable Projection (VarPro) is a framework to solve op- timization problems efficiently by optimall...