AbstractWe investigate the total least square problem (TLS) with Chebyshev norm instead of the traditionally used Frobenius norm. The use of Chebyshev norm is motivated by the need for robust solutions. In order to solve the problem, we introduce interval computation and use many of the results obtained there. We show that the problem we are tackling is NP-hard in general, but it becomes polynomial in the case of a fixed number of regressors. This is the most important practical result since usually we work with regression models with a low number of regression parameters (compared to the number of observations). We present not only a precise algorithm for the problem, but also a computationally efficient heuristic. We illustrate the behavi...
Straightforward solution of discrete ill-posed least-squares problems with error-contaminated data d...
AbstractFor a least-squares problem of m degree polynomial regression with n measured values (n ≥ m ...
This thesis is describing, comparing and implementing enclosure methods for solving overdetermined s...
AbstractWe investigate the total least square problem (TLS) with Chebyshev norm instead of the tradi...
We study the total least squares (TLS) prob-lem that generalizes least squares regression by allowin...
AbstractIn a total least squares (TLS) problem, we estimate an optimal set of model parameters X, so...
We review the development and extensions of the classical total least squares method and describe al...
AbstractThe total least squares (TLS) method is a successful approach for linear problems when not o...
We review the development and extensions of the classical total least squares method and describe al...
Recent advances in total least squares approaches for solving various errors-in-variables modeling p...
In this work we study the least squares and the total least squares problem for the solution of line...
. Discretizations of inverse problems lead to systems of linear equations with a highly ill-conditio...
International audienceIn this paper we are interested in computing linear least squares (LLS) condit...
We consider linear regression models where both input data (the values of independent variables) and...
AbstractIn this work, we study and analyze the regularized weighted total least squares (RWTLS) form...
Straightforward solution of discrete ill-posed least-squares problems with error-contaminated data d...
AbstractFor a least-squares problem of m degree polynomial regression with n measured values (n ≥ m ...
This thesis is describing, comparing and implementing enclosure methods for solving overdetermined s...
AbstractWe investigate the total least square problem (TLS) with Chebyshev norm instead of the tradi...
We study the total least squares (TLS) prob-lem that generalizes least squares regression by allowin...
AbstractIn a total least squares (TLS) problem, we estimate an optimal set of model parameters X, so...
We review the development and extensions of the classical total least squares method and describe al...
AbstractThe total least squares (TLS) method is a successful approach for linear problems when not o...
We review the development and extensions of the classical total least squares method and describe al...
Recent advances in total least squares approaches for solving various errors-in-variables modeling p...
In this work we study the least squares and the total least squares problem for the solution of line...
. Discretizations of inverse problems lead to systems of linear equations with a highly ill-conditio...
International audienceIn this paper we are interested in computing linear least squares (LLS) condit...
We consider linear regression models where both input data (the values of independent variables) and...
AbstractIn this work, we study and analyze the regularized weighted total least squares (RWTLS) form...
Straightforward solution of discrete ill-posed least-squares problems with error-contaminated data d...
AbstractFor a least-squares problem of m degree polynomial regression with n measured values (n ≥ m ...
This thesis is describing, comparing and implementing enclosure methods for solving overdetermined s...