Troxel, Lipsitz, and Brennan (1997, Biometrics 53, 857-869) considered parameter estimation from survey data with nonignorable nonresponse and proposed weighted estimating equations to remove the biases in the complete- case analysis that ignores missing observations. This paper suggests two alternative modifications for unbiased estimation of regression parameters when a binary outcome is potentially observed at successive time points. The weighting approach of Robins, Rotnitzky, and Zhao (1995, Journal of the American Statistical Association 90, 106-121) is also modified to obtain unbiased estimating functions. The suggested estimating functions are unbiased only when the missingness probability is correctly specified, and misspecificatio...
Longitudinal studies often feature incomplete response and covariate data. Likelihood-based methods...
© 2021 Ruoxu TanThe thesis mainly studies three different topics on missing data, where we intend to...
n Abstract Missing data are a pervasive problem in many public health investiga-tions. The standard ...
Troxel, Lipsitz, and Brennan (1997, Biometrics 53, 857-869) considered parameter estimation from sur...
Missing data often occur in regression analysis. Imputation, weighting, direct likelihood, and Bayes...
SUMMARY Linear regression is one of the most popular statistical techniques. In linear regression an...
<p>In logistic regression with nonignorable missing responses, Ibrahim and Lipsitz proposed a method...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
Copyright © 2017 John Wiley & Sons, Ltd. Nonresponses and missing data are common in observational s...
Missing data are a pervasive problem in large-scale surveys, arising when a sampled unit does not re...
Missing outcome values occur frequently in survey data and are rarely missing randomly. Depending on...
Missing data are a pervasive problem in large-scale surveys, arising when a sampled unit does not re...
[[abstract]]This article investigates estimation of the regression coefficients in an assumed mean f...
In this article, we study the estimation of mean response and regression coefficient in semiparametr...
Longitudinal studies often feature incomplete response and covariate data. Likelihood-based methods...
© 2021 Ruoxu TanThe thesis mainly studies three different topics on missing data, where we intend to...
n Abstract Missing data are a pervasive problem in many public health investiga-tions. The standard ...
Troxel, Lipsitz, and Brennan (1997, Biometrics 53, 857-869) considered parameter estimation from sur...
Missing data often occur in regression analysis. Imputation, weighting, direct likelihood, and Bayes...
SUMMARY Linear regression is one of the most popular statistical techniques. In linear regression an...
<p>In logistic regression with nonignorable missing responses, Ibrahim and Lipsitz proposed a method...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
Copyright © 2017 John Wiley & Sons, Ltd. Nonresponses and missing data are common in observational s...
Missing data are a pervasive problem in large-scale surveys, arising when a sampled unit does not re...
Missing outcome values occur frequently in survey data and are rarely missing randomly. Depending on...
Missing data are a pervasive problem in large-scale surveys, arising when a sampled unit does not re...
[[abstract]]This article investigates estimation of the regression coefficients in an assumed mean f...
In this article, we study the estimation of mean response and regression coefficient in semiparametr...
Longitudinal studies often feature incomplete response and covariate data. Likelihood-based methods...
© 2021 Ruoxu TanThe thesis mainly studies three different topics on missing data, where we intend to...
n Abstract Missing data are a pervasive problem in many public health investiga-tions. The standard ...