In many fields of statistical application the fundamental task is to quantify the association between some explanatory variables or covariates and a response or outcome variable through a suitable regression model. The accuracy of such quantification depends on how precisely we measure the relevant covariates. In many instances, we can not measure some of the covariates accurately, rather we can measure noisy versions of them. In statistical terminology this is known as measurement errors or errors in variables. Regression analyses based on noisy covariate measurements lead to biased and inaccurate inference about the true underlying response-covariate associations. In this thesis we investigate some aspects of measurement error modelling i...
this paper is to show how the method of Rosner et al. may be extended by including a second term in ...
Error in measuring exposure variable is a common concern in all etiologic research. There has been i...
A mixture measurement error model built upon skew normal distributions and normal distributions is d...
In many fields of statistical application the fundamental task is to quantify the association betwee...
A logistic model relating the rates of transition between two states to a vector of covariates is co...
There has been increasing acknowledgment of the importance of measurement error in epidemiology and ...
Includes bibliographical references (p. 69-71)Adaptive designs are increasingly popular in clinical ...
Includes bibliographical references (p. 96-98).In a variety of regression applications, measurement ...
[[abstract]]Owing to its good properties and a simple model fitting procedure, logistic regression i...
A simple form of measurement error model for explanatory variables is studied incorporating classica...
A mixture measurement error model built upon skew normal distributions and normal distributions is d...
When measurement error is present among the covariates of a regression model it can cause bias in th...
Frequently, covariates used in a logistic regression are measured with error. The authors previously...
Abstract: We consider the estimation problem of a logistic regression model. We assume the response ...
A simple form of measurement error model for explanatory variables is studied incorporating classica...
this paper is to show how the method of Rosner et al. may be extended by including a second term in ...
Error in measuring exposure variable is a common concern in all etiologic research. There has been i...
A mixture measurement error model built upon skew normal distributions and normal distributions is d...
In many fields of statistical application the fundamental task is to quantify the association betwee...
A logistic model relating the rates of transition between two states to a vector of covariates is co...
There has been increasing acknowledgment of the importance of measurement error in epidemiology and ...
Includes bibliographical references (p. 69-71)Adaptive designs are increasingly popular in clinical ...
Includes bibliographical references (p. 96-98).In a variety of regression applications, measurement ...
[[abstract]]Owing to its good properties and a simple model fitting procedure, logistic regression i...
A simple form of measurement error model for explanatory variables is studied incorporating classica...
A mixture measurement error model built upon skew normal distributions and normal distributions is d...
When measurement error is present among the covariates of a regression model it can cause bias in th...
Frequently, covariates used in a logistic regression are measured with error. The authors previously...
Abstract: We consider the estimation problem of a logistic regression model. We assume the response ...
A simple form of measurement error model for explanatory variables is studied incorporating classica...
this paper is to show how the method of Rosner et al. may be extended by including a second term in ...
Error in measuring exposure variable is a common concern in all etiologic research. There has been i...
A mixture measurement error model built upon skew normal distributions and normal distributions is d...