Includes bibliographical references (p. 96-98).In a variety of regression applications, measurement problems are unavoidable because infallible measurement tools may be expensive or unavailable. When modeling the relationship between a response variable and covariates, we must account for the uncertainty that is inherently introduced when one or both of these variables are measured with error. In this dissertation, we explore the consequences of and remedies for imperfect measurements. We consider a Bayesian analysis for modeling a binary outcome that is subject to misclassification. We investigate the use of informative conditional means priors for the regression coefficients. Additionally, we incorporate random effects into the mo...
Matrix-variate regression models are useful for featuring data with a matrix structure, such as brai...
Measurement error occurs frequently in observational studies investigating the relationship between...
We present a Bayesian analysis of a regression model with a binary covariate that may have classific...
Includes bibliographical references (p. ).Mismeasurment, and specifically misclassification, are ine...
Includes bibliographical references (p. 106-109).Binary misclassification is a common occurrence in ...
Estimated associations between an outcome variable and misclassified covariates tend to be biased wh...
Misclassification of an outcome and/or covariate is present in many regression applications due to t...
We study the effect of misclassification of a binary covariate on the parameters of a logistic regre...
In many fields of statistical application the fundamental task is to quantify the association betwee...
Misclassification of epidemiological and observational data is a problem that commonly arises and ca...
Includes bibliographical references (p. 69-71)Adaptive designs are increasingly popular in clinical ...
A mixture measurement error model built upon skew normal distributions and normal distributions is d...
Abstract: We consider the estimation problem of a logistic regression model. We assume the response ...
Abstract: The potential for bias due to misclassification error in regression analysis is well under...
Misclassification in a binary exposure variable within an unmatched prospective study may lead to a ...
Matrix-variate regression models are useful for featuring data with a matrix structure, such as brai...
Measurement error occurs frequently in observational studies investigating the relationship between...
We present a Bayesian analysis of a regression model with a binary covariate that may have classific...
Includes bibliographical references (p. ).Mismeasurment, and specifically misclassification, are ine...
Includes bibliographical references (p. 106-109).Binary misclassification is a common occurrence in ...
Estimated associations between an outcome variable and misclassified covariates tend to be biased wh...
Misclassification of an outcome and/or covariate is present in many regression applications due to t...
We study the effect of misclassification of a binary covariate on the parameters of a logistic regre...
In many fields of statistical application the fundamental task is to quantify the association betwee...
Misclassification of epidemiological and observational data is a problem that commonly arises and ca...
Includes bibliographical references (p. 69-71)Adaptive designs are increasingly popular in clinical ...
A mixture measurement error model built upon skew normal distributions and normal distributions is d...
Abstract: We consider the estimation problem of a logistic regression model. We assume the response ...
Abstract: The potential for bias due to misclassification error in regression analysis is well under...
Misclassification in a binary exposure variable within an unmatched prospective study may lead to a ...
Matrix-variate regression models are useful for featuring data with a matrix structure, such as brai...
Measurement error occurs frequently in observational studies investigating the relationship between...
We present a Bayesian analysis of a regression model with a binary covariate that may have classific...