Statistical models whose independent variables are subject to measurement errors are often referred to as 'errors-in-variables models'. To correct for the effects of measurement error on parameter estimation, this paper considers a correction for score functions. A corrected score function is one whose expectation with respect to the measurement error distribution coincides with the usual score function based on the unknown true indepen-dent variables. This approach makes it possible to do inference as well as estimation of model parameters without additional assumptions. The corrected score functions of some generalized linear models are obtained
In the presence of covariate measurement error with the proportional hazards model, several function...
Measurement error affecting the independent variables in regression models is a common problem in ma...
Measurement error in observations is widely known to cause bias and a loss of power when fitting sta...
[[abstract]]In measurement error problems, two major and consistent estimation methods are the condi...
[[abstract]]In measurement error problems, two major and consistent estimation methods are the condi...
Identi cation in errors-in-variables regression models was extended to wide models classes by S. Sch...
In this thesis we study the effect of regressors measured with an error on an estimated coefficients...
Misspecifications of econometric models can lead to biased coefficients and incorrect interpretation...
Predictor variables are often contaminated with measurement errors in statistical practice. This may...
We propose variable selection procedures based on penalized score functions derived for linear measu...
We propose variable selection procedures based on penalized score functions derived for linear measu...
It is well known that measurement error in observable variables induces bias in estimates in standar...
This paper discusses and illustrates the method of regression calibration. This is a straightforward...
There has been increasing acknowledgment of the importance of measurement error in epidemiology and ...
This paper discusses and illustrates the method of regression calibration. This is a straightforward...
In the presence of covariate measurement error with the proportional hazards model, several function...
Measurement error affecting the independent variables in regression models is a common problem in ma...
Measurement error in observations is widely known to cause bias and a loss of power when fitting sta...
[[abstract]]In measurement error problems, two major and consistent estimation methods are the condi...
[[abstract]]In measurement error problems, two major and consistent estimation methods are the condi...
Identi cation in errors-in-variables regression models was extended to wide models classes by S. Sch...
In this thesis we study the effect of regressors measured with an error on an estimated coefficients...
Misspecifications of econometric models can lead to biased coefficients and incorrect interpretation...
Predictor variables are often contaminated with measurement errors in statistical practice. This may...
We propose variable selection procedures based on penalized score functions derived for linear measu...
We propose variable selection procedures based on penalized score functions derived for linear measu...
It is well known that measurement error in observable variables induces bias in estimates in standar...
This paper discusses and illustrates the method of regression calibration. This is a straightforward...
There has been increasing acknowledgment of the importance of measurement error in epidemiology and ...
This paper discusses and illustrates the method of regression calibration. This is a straightforward...
In the presence of covariate measurement error with the proportional hazards model, several function...
Measurement error affecting the independent variables in regression models is a common problem in ma...
Measurement error in observations is widely known to cause bias and a loss of power when fitting sta...