This dissertation focuses on three important issues in causal inference. The three chapters focus on the common theme of causal inference in semi-parametric models. The first two chapters focus on further developing targeted maximum likelihood estimation (TMLE) methods for particular situations in survival analysis. Chapter 1 presents the collaborative targeted maximum likelihood estimator (C-TMLE) for the treatment specific survival curve. This estimator improves upon commonly used estimators in survival analysis and is particularly necessary for analyzing observational studies, data that exhibits dependent censoring, or both. Chapter 2 presents two interesting parameters of interest for quantifying effect modification in time to event stu...
This dissertation focuses on developing robust semiparametric methods for complex parameters that em...
In this thesis, we argue for the use of loss-based semi-parametric estimation methods as an alternat...
Many scientific questions are to understand and reveal the causal mechanisms from observational stud...
Current methods used to analyze time to event data either, rely on highly parametric assumptions whi...
We present a brief overview of targeted maximum likelihood for estimating the causal effect of a sin...
We present a brief overview of targeted maximum likelihood for estimating the causal effect of a sin...
This paper provides a concise introduction to targeted maximum likelihood estimation (TMLE) of causa...
In many randomized controlled trials the outcome of interest is a time to event, and one measures on...
In this article, we provide a template for the practical implementation of the targeted maximum like...
Causal inference generally requires making some assumptions on a causal mechanism followed by statis...
ii To my parents iv Estimating causal effects in clinical trials is often complicated by treatment n...
In many scientific studies the goal is to determine the effect of a particular feature or variable o...
In this thesis, we argue for the use of loss-based semi-parametric estimation methods as an alternat...
This paper describes a targeted maximum likelihood estimator (TMLE) for the parameters of longitudin...
Robust inference of a low-dimensional parameter in a large semi-parametric model relies on externa...
This dissertation focuses on developing robust semiparametric methods for complex parameters that em...
In this thesis, we argue for the use of loss-based semi-parametric estimation methods as an alternat...
Many scientific questions are to understand and reveal the causal mechanisms from observational stud...
Current methods used to analyze time to event data either, rely on highly parametric assumptions whi...
We present a brief overview of targeted maximum likelihood for estimating the causal effect of a sin...
We present a brief overview of targeted maximum likelihood for estimating the causal effect of a sin...
This paper provides a concise introduction to targeted maximum likelihood estimation (TMLE) of causa...
In many randomized controlled trials the outcome of interest is a time to event, and one measures on...
In this article, we provide a template for the practical implementation of the targeted maximum like...
Causal inference generally requires making some assumptions on a causal mechanism followed by statis...
ii To my parents iv Estimating causal effects in clinical trials is often complicated by treatment n...
In many scientific studies the goal is to determine the effect of a particular feature or variable o...
In this thesis, we argue for the use of loss-based semi-parametric estimation methods as an alternat...
This paper describes a targeted maximum likelihood estimator (TMLE) for the parameters of longitudin...
Robust inference of a low-dimensional parameter in a large semi-parametric model relies on externa...
This dissertation focuses on developing robust semiparametric methods for complex parameters that em...
In this thesis, we argue for the use of loss-based semi-parametric estimation methods as an alternat...
Many scientific questions are to understand and reveal the causal mechanisms from observational stud...