Given a sufficient number of instrumental variables significantly correlated with the investigational variables, consistent estimates of the coefficients of the linear relations can be determined (if they exist), without knowledge of the disturbance variances. The estimates are discussed from the viewpoint of probability convergence. In the case of two investigational and one instrumental variable, all three variables distributed on the normal surface, the distribution of the estimate of the coefficient is found exactly for all sample sizes, on certain hypotheses. The distribution function is remarkably simple. The applicability of the theorem to economic time series is discussed by (a) comparing the probability inferences derived from this...
This paper studies the finite sample distributions of estimators of the cointegrating vector of linea...
The present article considers the problem of consistent estimation in measurement error models. A li...
The properties of the normal distribution under linear transformation, as well the easy way to compu...
Abstract: Given a sufficient number of instrumental variables significantly correlated with the inve...
This thesis considers two aspects of statistical inference associated with the linear regression mod...
AbstractThis paper surveys the problem of estimating a linear relationship between variables which a...
Random coefficient linear regression models have been employed in economics, medical and psychologic...
. A general linear model can be written as Y = XB 0 + U , where Y is an N \Theta p matrix of obser...
We sketch the proof of some theorems that show how to estimate the parameters in linear regressions,...
The sampling properties of estimators of the structural parameters in a linear structural relationsh...
In simple static linear simultaneous equation models the empirical distributions of IV and OLS are e...
We propose an approach to the problem of measurement errors that evokes long established but rarely ...
We provide a comprehensive treatment for the problem of testing jointly for structural changes in bo...
This article takes correlation coefficients as the starting point to obtain inferential results in l...
This paper studies the asymptotic properties of instrumental variable (IV) estimates of multivariate...
This paper studies the finite sample distributions of estimators of the cointegrating vector of linea...
The present article considers the problem of consistent estimation in measurement error models. A li...
The properties of the normal distribution under linear transformation, as well the easy way to compu...
Abstract: Given a sufficient number of instrumental variables significantly correlated with the inve...
This thesis considers two aspects of statistical inference associated with the linear regression mod...
AbstractThis paper surveys the problem of estimating a linear relationship between variables which a...
Random coefficient linear regression models have been employed in economics, medical and psychologic...
. A general linear model can be written as Y = XB 0 + U , where Y is an N \Theta p matrix of obser...
We sketch the proof of some theorems that show how to estimate the parameters in linear regressions,...
The sampling properties of estimators of the structural parameters in a linear structural relationsh...
In simple static linear simultaneous equation models the empirical distributions of IV and OLS are e...
We propose an approach to the problem of measurement errors that evokes long established but rarely ...
We provide a comprehensive treatment for the problem of testing jointly for structural changes in bo...
This article takes correlation coefficients as the starting point to obtain inferential results in l...
This paper studies the asymptotic properties of instrumental variable (IV) estimates of multivariate...
This paper studies the finite sample distributions of estimators of the cointegrating vector of linea...
The present article considers the problem of consistent estimation in measurement error models. A li...
The properties of the normal distribution under linear transformation, as well the easy way to compu...