This dissertation addresses regression models with missing covariate data. These methods are shown to be significant to public health research since they enable researchers to use a wider spectrum of data. Unbiased estimating equations are the focus of this dissertation, predominantly semiparametric methods utilized to solve for regression parameters in the presence of missing covariate data. The first aim of this dissertation is to evaluate the properties of an efficient score, an inverse probability weighted estimating equation approach, for logistic regression in a two-phase design. Simulation studies showed that the efficient score is more efficient than two other pseudo-likelihood methods when the correlation between the missing covari...
In this article, two semiparametric approaches are developed for analyzing randomized response data ...
Missing data often occur in regression analysis. Imputation, weighting, direct likelihood, and Bayes...
The partially linear model Y DXT¯C º.Z/C has been studied extensively when data are completely obse...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
One difficulty in regression analysis for longitudinal data is that the outcomes are oftenmissing in...
This dissertation includes three papers on missing data problems where methods other than parametric...
Missing data are very common in many areas such as sociology, biomedical sciences and clinical trial...
In this article, we study the estimation of mean response and regression coefficient in semiparametr...
This is the peer reviewed version of the following article: Shen, Hua, and Richard J. Cook. "Regress...
Logistic regression is one of the most important tools in the analysis of epidemiological and clinic...
Maximum likelihood estimation of regression parameters with incomplete covariate information usually...
In epidemiologic and biological studies, investigators seek to establish relationships between a res...
Longitudinal studies often feature incomplete response and covariate data. Likelihood-based methods...
AbstractMissing covariate data are very common in regression analysis. In this paper, the weighted e...
Missing problem is very common in today's public health studies because of responses measured longit...
In this article, two semiparametric approaches are developed for analyzing randomized response data ...
Missing data often occur in regression analysis. Imputation, weighting, direct likelihood, and Bayes...
The partially linear model Y DXT¯C º.Z/C has been studied extensively when data are completely obse...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
One difficulty in regression analysis for longitudinal data is that the outcomes are oftenmissing in...
This dissertation includes three papers on missing data problems where methods other than parametric...
Missing data are very common in many areas such as sociology, biomedical sciences and clinical trial...
In this article, we study the estimation of mean response and regression coefficient in semiparametr...
This is the peer reviewed version of the following article: Shen, Hua, and Richard J. Cook. "Regress...
Logistic regression is one of the most important tools in the analysis of epidemiological and clinic...
Maximum likelihood estimation of regression parameters with incomplete covariate information usually...
In epidemiologic and biological studies, investigators seek to establish relationships between a res...
Longitudinal studies often feature incomplete response and covariate data. Likelihood-based methods...
AbstractMissing covariate data are very common in regression analysis. In this paper, the weighted e...
Missing problem is very common in today's public health studies because of responses measured longit...
In this article, two semiparametric approaches are developed for analyzing randomized response data ...
Missing data often occur in regression analysis. Imputation, weighting, direct likelihood, and Bayes...
The partially linear model Y DXT¯C º.Z/C has been studied extensively when data are completely obse...