AbstractThis paper reviews and extends some of the known results in the estimation in “errors-in-variables” models, treating the structural and the functional cases on a unified basis. The generalized least-squares method proposed by some previous authors is extended to the case where the error covariance matrix contains an unknown vector parameter. This alleviates the difficulty of multiple roots arising from defining estimators as roots to a set of unbiased estimating equations. An alternative method is also considered for cases with both known and unknown error covariance matrix. The relationship between this method and the usual maximum-likelihood and generalized least-squares approaches is also investigated, and it is shown that in a s...
In the multivariate errors in variable models one wishes to retrieve a linear relationship of the fo...
AbstractThe paper is concerned with estimating multivariate linear and autoregressive models using a...
The paper presents an estimator of the errors-in-variables in multiple regressions using only first ...
AbstractThis paper reviews and extends some of the known results in the estimation in “errors-in-var...
AbstractEstimators of the parameters of the functional multivariate linear errors-in-variables model...
We discuss some methods of estimation in bivariate errors-in-variables linear models. We also sugges...
Charles University in Prague Faculty of Mathematics and Physics ABSTRACT OF DOCTORAL THESIS Michal P...
Charles University in Prague Faculty of Mathematics and Physics ABSTRACT OF DOCTORAL THESIS Michal P...
AbstractThis paper studies a semi-linear errors-in-variables model of the formYi=x′iβ+g(Ti)+ei,Xi=xi...
It is a well-known fact that standard regression techniques, when applied to errors-in-variables (EI...
Abstract In the multivariate errors in variables models one wishes to re-trieve a linear relationshi...
It is a well-known fact that standard regression techniques, when applied to errors-in-variables (EI...
In the multivariate errors in variables models, one wishes to retrieve a linear relationship of the ...
This paper studies a semi-linear errors-in-variables model of the formYi=x'i[beta]+g(Ti)+ei,Xi=xi+ui...
Recent research provided several new and fast approaches for the class of parameter estimation prob...
In the multivariate errors in variable models one wishes to retrieve a linear relationship of the fo...
AbstractThe paper is concerned with estimating multivariate linear and autoregressive models using a...
The paper presents an estimator of the errors-in-variables in multiple regressions using only first ...
AbstractThis paper reviews and extends some of the known results in the estimation in “errors-in-var...
AbstractEstimators of the parameters of the functional multivariate linear errors-in-variables model...
We discuss some methods of estimation in bivariate errors-in-variables linear models. We also sugges...
Charles University in Prague Faculty of Mathematics and Physics ABSTRACT OF DOCTORAL THESIS Michal P...
Charles University in Prague Faculty of Mathematics and Physics ABSTRACT OF DOCTORAL THESIS Michal P...
AbstractThis paper studies a semi-linear errors-in-variables model of the formYi=x′iβ+g(Ti)+ei,Xi=xi...
It is a well-known fact that standard regression techniques, when applied to errors-in-variables (EI...
Abstract In the multivariate errors in variables models one wishes to re-trieve a linear relationshi...
It is a well-known fact that standard regression techniques, when applied to errors-in-variables (EI...
In the multivariate errors in variables models, one wishes to retrieve a linear relationship of the ...
This paper studies a semi-linear errors-in-variables model of the formYi=x'i[beta]+g(Ti)+ei,Xi=xi+ui...
Recent research provided several new and fast approaches for the class of parameter estimation prob...
In the multivariate errors in variable models one wishes to retrieve a linear relationship of the fo...
AbstractThe paper is concerned with estimating multivariate linear and autoregressive models using a...
The paper presents an estimator of the errors-in-variables in multiple regressions using only first ...