<p>This article considers linear regression with missing covariates and a right censored outcome. We first consider a general two-phase outcome sampling design, where full covariate information is only ascertained for subjects in phase two and sampling occurs under an independent Bernoulli sampling scheme with known subject-specific sampling probabilities that depend on phase one information (e.g., survival time, failure status and covariates). The semiparametric information bound is derived for estimating the regression parameter in this setting. We also introduce a more practical class of augmented estimators that is shown to improve asymptotic efficiency over simple but inefficient inverse probability of sampling weighted estimators. Est...
The classical accelerated failure time (AFT) model has been extensively investigated due to its dire...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
2011-08-02This dissertation addresses two challenging problems arising in inference with censored fa...
This dissertation focuses on utilizing information more efficiently in several settings when some ob...
Summary. In large cohort studies, it often happens that some covariates are expensive to measure and...
In large cohort studies, it often happens that some covariates are expensive to measure and hence on...
Independent censoring is a crucial assumption in survival analysis. However, this is imprac-tical in...
In this dissertation, we consider the use of linear models in the presence of clustered, right-censo...
In survival analysis, semiparametric accelerated failure time (AFT) models directly relate the predi...
The Kaplan-Meier estimator of a survival function is well known to be asymp- totically efficient whe...
The Kaplan–Meier estimator of a survival function is well known to be asymptotically efficient when ...
This thesis develops two semiparametric methods for censored survival data when the covariates invol...
In survival analysis, semiparametric accelerated failure time (AFT) models directly relate the predi...
The Kaplan--Meier estimator of a survival function is used when cause of failure (censored or non-ce...
Regression with censored data is important in the inferences of the survival or failure time data. P...
The classical accelerated failure time (AFT) model has been extensively investigated due to its dire...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
2011-08-02This dissertation addresses two challenging problems arising in inference with censored fa...
This dissertation focuses on utilizing information more efficiently in several settings when some ob...
Summary. In large cohort studies, it often happens that some covariates are expensive to measure and...
In large cohort studies, it often happens that some covariates are expensive to measure and hence on...
Independent censoring is a crucial assumption in survival analysis. However, this is imprac-tical in...
In this dissertation, we consider the use of linear models in the presence of clustered, right-censo...
In survival analysis, semiparametric accelerated failure time (AFT) models directly relate the predi...
The Kaplan-Meier estimator of a survival function is well known to be asymp- totically efficient whe...
The Kaplan–Meier estimator of a survival function is well known to be asymptotically efficient when ...
This thesis develops two semiparametric methods for censored survival data when the covariates invol...
In survival analysis, semiparametric accelerated failure time (AFT) models directly relate the predi...
The Kaplan--Meier estimator of a survival function is used when cause of failure (censored or non-ce...
Regression with censored data is important in the inferences of the survival or failure time data. P...
The classical accelerated failure time (AFT) model has been extensively investigated due to its dire...
This dissertation addresses regression models with missing covariate data. These methods are shown t...
2011-08-02This dissertation addresses two challenging problems arising in inference with censored fa...