AbstractLinear regression models are studied when variables of interest are observed in the presence of measurement error. Techniques involving Fourier transforms that lead to simple differential equations with unique solutions are used in the context of multiple regression. Necessary and sufficient conditions are proven for a random vector of measurement error of the independent variable to be multivariate normal. One characterization involves the Fisher score of the observed vector. A second characterization involves the Hessian matrix of the observed density
In this paper we consider measurement error models when the observed random vectors are independent ...
Measurement error biases OLS results. When the measurement error variance in absolute or relative (r...
AbstractIn this paper we consider measurement error models when the observed random vectors are inde...
Linear regression models are studied when variables of interest are observed in the presence of meas...
AbstractA multivariate ultrastructural measurement error model is considered and it is assumed that ...
The problem of using information available from one variable X to make inferenceabout another Y is c...
In this paper we give reason to hope that errors in regression variables are not as harmful as one m...
I consider the estimation of linear regression models when the independent variables are measured wi...
AbstractIn this paper, to test goodness of fit to any fixed distribution of errors in multivariate l...
Multivariate measurement error regression models with normal errors are investigated and residuals, ...
The measurement error model with heterogeneous error variances is considered. Theory for estimators ...
A multivariate ultrastructural measurement error model is considered and it is assumed that some pri...
A measurement error model is a regression model with (substantial) measurement errors in the variabl...
The present article considers the problem of consistent estimation in measurement error models. A li...
When a p-dimensional parameter θ is defined through the moment condition Em(X,θ) = 0, a simple estima...
In this paper we consider measurement error models when the observed random vectors are independent ...
Measurement error biases OLS results. When the measurement error variance in absolute or relative (r...
AbstractIn this paper we consider measurement error models when the observed random vectors are inde...
Linear regression models are studied when variables of interest are observed in the presence of meas...
AbstractA multivariate ultrastructural measurement error model is considered and it is assumed that ...
The problem of using information available from one variable X to make inferenceabout another Y is c...
In this paper we give reason to hope that errors in regression variables are not as harmful as one m...
I consider the estimation of linear regression models when the independent variables are measured wi...
AbstractIn this paper, to test goodness of fit to any fixed distribution of errors in multivariate l...
Multivariate measurement error regression models with normal errors are investigated and residuals, ...
The measurement error model with heterogeneous error variances is considered. Theory for estimators ...
A multivariate ultrastructural measurement error model is considered and it is assumed that some pri...
A measurement error model is a regression model with (substantial) measurement errors in the variabl...
The present article considers the problem of consistent estimation in measurement error models. A li...
When a p-dimensional parameter θ is defined through the moment condition Em(X,θ) = 0, a simple estima...
In this paper we consider measurement error models when the observed random vectors are independent ...
Measurement error biases OLS results. When the measurement error variance in absolute or relative (r...
AbstractIn this paper we consider measurement error models when the observed random vectors are inde...