We review the development and extensions of the classical total least squares method and describe algorithms for its generalization to weighted and structured approximation problems. In the generic case, the classical total least squares problem has a unique solution, which is given in analytic form in terms of the singular value decomposition of the data matrix. The weighted and structured total least squares problems have no such analytic solution and are currently solved numerically by local optimization methods. We explain how special structure of the weight matrix and the data matrix can be exploited for efficient cost function and first derivative computation. This allows to obtain computationally efficient solution methods. The total...
We show that the generalized total least squares (GTLS) problem with a singular noise covariance mat...
AbstractThe total least squares (TLS) method is a successful approach for linear problems when not o...
A class of structured total least squares problems is considered, in which the extended data matrix ...
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...
AbstractIt is shown how structured and weighted total least squares and L2 approximation problems le...
We present a software package for structured total least squares approximation problems. The allowed...
A multivariate structured total least squares problem is considered, in which the extended data matr...
AbstractWe present a software package for structured total least-squares approximation problems. The...
It is shown how structured and weighted total least squares and L 2 approximation problems lead to a...
In this work we study the least squares and the total least squares problem for the solution of line...
Abstract. A structured total least squares problem is considered in which the extended data matrix i...
The approach of SIAM J. Matrix Anal. Appl., 26(4):1083–1099 for solving structured total least squar...
Recent advances in total least squares approaches for solving various errors-in-variables modeling p...
Linear approximation problems arise in various applications and can be solved by a large variety of ...
We show that the generalized total least squares (GTLS) problem with a singular noise covariance mat...
AbstractThe total least squares (TLS) method is a successful approach for linear problems when not o...
A class of structured total least squares problems is considered, in which the extended data matrix ...
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...
AbstractIt is shown how structured and weighted total least squares and L2 approximation problems le...
We present a software package for structured total least squares approximation problems. The allowed...
A multivariate structured total least squares problem is considered, in which the extended data matr...
AbstractWe present a software package for structured total least-squares approximation problems. The...
It is shown how structured and weighted total least squares and L 2 approximation problems lead to a...
In this work we study the least squares and the total least squares problem for the solution of line...
Abstract. A structured total least squares problem is considered in which the extended data matrix i...
The approach of SIAM J. Matrix Anal. Appl., 26(4):1083–1099 for solving structured total least squar...
Recent advances in total least squares approaches for solving various errors-in-variables modeling p...
Linear approximation problems arise in various applications and can be solved by a large variety of ...
We show that the generalized total least squares (GTLS) problem with a singular noise covariance mat...
AbstractThe total least squares (TLS) method is a successful approach for linear problems when not o...
A class of structured total least squares problems is considered, in which the extended data matrix ...