A measurement error model is a regression model with (substantial) measurement errors in the variables. Disregarding these measurement errors in estimating the regression parameters results in asymptotically biased estimators. Several methods have been proposed to eliminate, or at least to reduce, this bias, and the relative efficiency and robustness of these methods have been compared. The paper gives an account of these endeavors. In another context, when data are of a categorical nature, classification errors play a similar role as measurement errors in continuous data. The paper also reviews some recent advances in this field
Traditional notions of measurement error typically rely on a strong mean-zero assumption on the expe...
Measurement error in observations is widely known to cause bias and a loss of power when fitting sta...
The importance of measurement error for parameter estimation and for the design of statistical studi...
A measurement error model is a regression model with (substantial) measurement errors in the variabl...
A measurement error model is a regression model with (substan-tial) measurement errors in the variab...
The problem of using information available from one variable X to make inferenceabout another Y is c...
Measurements in educational research are often subject to error. Where it is desired to base conclus...
Measurement error affecting the independent variables in regression models is a common problem in ma...
When measurement error is present among the covariates of a regression model it can cause bias in th...
The paper is a survey of recent investigations by the authors and others into the relative efficienc...
We consider the simple measurement error regression model y[subscript] t = [beta][subscript]0 + [bet...
This monograph on measurement error and misclassification covers a broad range of problems and empha...
Measurement error affecting the independent variables in regression models is a common problem in ma...
We consider the implications of an alternative to the classical measurement-error model, in which th...
The measurement error model with heterogeneous error variances is considered. Theory for estimators ...
Traditional notions of measurement error typically rely on a strong mean-zero assumption on the expe...
Measurement error in observations is widely known to cause bias and a loss of power when fitting sta...
The importance of measurement error for parameter estimation and for the design of statistical studi...
A measurement error model is a regression model with (substantial) measurement errors in the variabl...
A measurement error model is a regression model with (substan-tial) measurement errors in the variab...
The problem of using information available from one variable X to make inferenceabout another Y is c...
Measurements in educational research are often subject to error. Where it is desired to base conclus...
Measurement error affecting the independent variables in regression models is a common problem in ma...
When measurement error is present among the covariates of a regression model it can cause bias in th...
The paper is a survey of recent investigations by the authors and others into the relative efficienc...
We consider the simple measurement error regression model y[subscript] t = [beta][subscript]0 + [bet...
This monograph on measurement error and misclassification covers a broad range of problems and empha...
Measurement error affecting the independent variables in regression models is a common problem in ma...
We consider the implications of an alternative to the classical measurement-error model, in which th...
The measurement error model with heterogeneous error variances is considered. Theory for estimators ...
Traditional notions of measurement error typically rely on a strong mean-zero assumption on the expe...
Measurement error in observations is widely known to cause bias and a loss of power when fitting sta...
The importance of measurement error for parameter estimation and for the design of statistical studi...