AbstractThe total least-squares (TLS) technique, which is well known in numerical linear algebra and able to compute strongly consistent estimators of the parameters in a linear errors-in-variables model, is compared algebraically with the classical regression estimators. Using the singular-value decomposition and geometric concepts, algebraic equivalences and important relationships between the classical regression techniques and TLS estimation are established with special reference to problems of collinearity. The equivalence between principal-component and latent-root regression in collinearity problems is proven, and the difference between latent-root regression and TLS estimation is clarified
Through theoretical derivation, some properties of the total least squares estimation are found. The...
This paper deals with a homoskedastic errors-in-variables linear regression model and properties of ...
The least squares (LS) type of methods are the most widely used methods in system identificationdesp...
AbstractThe total least-squares (TLS) technique, which is well known in numerical linear algebra and...
Abstract:In classical regression analysis, the error of independent variable is usually not taken in...
In classical regression analysis, the error of independent variable is usually not taken into accoun...
In this work we study the least squares and the total least squares problem for the solution of line...
In the present thesis we deal with the linear regression models based on least squares. These method...
Totla least squares (TLS) is a method of fitting that is appropriate when there are errors in both ...
Linear approximation problems arise in various applications and can be solved by a large variety of ...
We review the development and extensions of the classical total least squares method and describe al...
The maximum likelihood PCA (MLPCA) method has been devised in chemometrics as a generalization of th...
Least-Squares (LS) adjustment method aims at estimating a vector of parameters ξ, from a linear mode...
We review the development and extensions of the classical total least squares method and describe al...
The class of total least squares methods has been growing since the basic total least squares method...
Through theoretical derivation, some properties of the total least squares estimation are found. The...
This paper deals with a homoskedastic errors-in-variables linear regression model and properties of ...
The least squares (LS) type of methods are the most widely used methods in system identificationdesp...
AbstractThe total least-squares (TLS) technique, which is well known in numerical linear algebra and...
Abstract:In classical regression analysis, the error of independent variable is usually not taken in...
In classical regression analysis, the error of independent variable is usually not taken into accoun...
In this work we study the least squares and the total least squares problem for the solution of line...
In the present thesis we deal with the linear regression models based on least squares. These method...
Totla least squares (TLS) is a method of fitting that is appropriate when there are errors in both ...
Linear approximation problems arise in various applications and can be solved by a large variety of ...
We review the development and extensions of the classical total least squares method and describe al...
The maximum likelihood PCA (MLPCA) method has been devised in chemometrics as a generalization of th...
Least-Squares (LS) adjustment method aims at estimating a vector of parameters ξ, from a linear mode...
We review the development and extensions of the classical total least squares method and describe al...
The class of total least squares methods has been growing since the basic total least squares method...
Through theoretical derivation, some properties of the total least squares estimation are found. The...
This paper deals with a homoskedastic errors-in-variables linear regression model and properties of ...
The least squares (LS) type of methods are the most widely used methods in system identificationdesp...