A linear regression model, where covariates and a response are subject to errors, is considered in this thesis. For so-called errors-in-variables (EIV) model, suitable error structures are proposed, various unknown parameter estimation techniques are performed, and recent algebraic and statistical results are summarized. An extension of the total least squares (TLS) estimate in the EIV model-the EIV estimate-is invented. Its invariant (with respect to scale) and equivariant (with respect to the covariates' rotation, to the change of covariates direction, and to the interchange of covariates) properties are derived. Moreover, it is shown that the EIV estimate coincides with any unitarily invariant penalizing solution to the EIV problem. It i...
It is a well-known fact that standard regression techniques, when applied to errors-in-variables (EI...
The bootstraps methods can be widely applied in statistical research. In the paper the bootstraps O...
In the classical linear regression model the problem of testing for symmetry of the error distributi...
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...
summary:Linear relations, containing measurement errors in input and output data, are taken into acc...
summary:Linear relations, containing measurement errors in input and output data, are taken into acc...
The construction of a regression model consists of many procedures such as identification of outlier...
The independent variables of linear mixed models are subject to measurement errors in practice. In t...
System identification is an established field in the area of system analysis and control. It aims at...
Estimating large covariance matrices from small samples is an important problem in many fields. Amon...
The thesis concerns with e ect of covariate measurement error on the least squares estimators and te...
It is a well-known fact that standard regression techniques, when applied to errors-in-variables (EI...
AbstractConsider the linear models of the form Y=Xτβ+ε with the response Y censored randomly on the ...
This paper deals with a homoskedastic errors-in-variables linear regression model and properties of ...
It is a well-known fact that standard regression techniques, when applied to errors-in-variables (EI...
The bootstraps methods can be widely applied in statistical research. In the paper the bootstraps O...
In the classical linear regression model the problem of testing for symmetry of the error distributi...
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...
summary:Linear relations, containing measurement errors in input and output data, are taken into acc...
summary:Linear relations, containing measurement errors in input and output data, are taken into acc...
The construction of a regression model consists of many procedures such as identification of outlier...
The independent variables of linear mixed models are subject to measurement errors in practice. In t...
System identification is an established field in the area of system analysis and control. It aims at...
Estimating large covariance matrices from small samples is an important problem in many fields. Amon...
The thesis concerns with e ect of covariate measurement error on the least squares estimators and te...
It is a well-known fact that standard regression techniques, when applied to errors-in-variables (EI...
AbstractConsider the linear models of the form Y=Xτβ+ε with the response Y censored randomly on the ...
This paper deals with a homoskedastic errors-in-variables linear regression model and properties of ...
It is a well-known fact that standard regression techniques, when applied to errors-in-variables (EI...
The bootstraps methods can be widely applied in statistical research. In the paper the bootstraps O...
In the classical linear regression model the problem of testing for symmetry of the error distributi...