Three simplifying conditions are given for obtaining least squares (LS) estimates for a nonlinear submodel of a linear model. If these are satisfied, and if the subset of nonlinear parameters may be LS fit to the corresponding LS estimates of the linear model, then one attains the desired LS estimates for the entire submodel. Two illustrative analyses employing this method are given, each involving an Eckart-Young (LS) decomposition of a matrix of linear LS estimates. In each case the factors provide an LS fit of the nonlinear submodel to the original data. The minimum error sum of squares for this fit is the error sum of squares for the corresponding linear model plus a function of the eigenvalues involved in the factorization. An Eckart-Y...
In this section some aspects of linear statistical models or regression models will be reviewed. Top...
In this work, we combine the special structure of the separable nonlinear least squares problem with...
For the given data (wI, xI, yI ), i = 1, . . . , n, and the given model function f (x; θ), where θ i...
<p>Estimated model parameters (relative susceptibility and infectivity in children, and reproductive...
Least squares parameter estimation algorithms for nonlinear systems are investigated based on a nonl...
We show that separable nonlinear least squares (SNLLS) estimation is applicable to all linear struct...
AbstractThe paper uses empirical process techniques to study the asymptotics of the least-squares es...
It is sometimes desired to update solutions to systems of equations or other problems as new infor...
Nonlinear dynamic models are widely used for characterizing processes that govern complex biological...
We study nonlinear least-squares problem that can be transformed to linear problem by change of vari...
textabstractThe author presents a new method for estimating the parameters of the linear learning mo...
The author presents a new method for estimoting the parameters of the linear learning model. The pro...
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
For separable nonlinear least squares models, a variable projection algorithm based on matrix factor...
The book is based on several years of experience of both authors in teaching linear models at variou...
In this section some aspects of linear statistical models or regression models will be reviewed. Top...
In this work, we combine the special structure of the separable nonlinear least squares problem with...
For the given data (wI, xI, yI ), i = 1, . . . , n, and the given model function f (x; θ), where θ i...
<p>Estimated model parameters (relative susceptibility and infectivity in children, and reproductive...
Least squares parameter estimation algorithms for nonlinear systems are investigated based on a nonl...
We show that separable nonlinear least squares (SNLLS) estimation is applicable to all linear struct...
AbstractThe paper uses empirical process techniques to study the asymptotics of the least-squares es...
It is sometimes desired to update solutions to systems of equations or other problems as new infor...
Nonlinear dynamic models are widely used for characterizing processes that govern complex biological...
We study nonlinear least-squares problem that can be transformed to linear problem by change of vari...
textabstractThe author presents a new method for estimating the parameters of the linear learning mo...
The author presents a new method for estimoting the parameters of the linear learning model. The pro...
The paper uses empirical process techniques to study the asymptotics of the least-squares estimator ...
For separable nonlinear least squares models, a variable projection algorithm based on matrix factor...
The book is based on several years of experience of both authors in teaching linear models at variou...
In this section some aspects of linear statistical models or regression models will be reviewed. Top...
In this work, we combine the special structure of the separable nonlinear least squares problem with...
For the given data (wI, xI, yI ), i = 1, . . . , n, and the given model function f (x; θ), where θ i...