This dissertation discusses the Targeted maximum Likelihood Estimation (TMLE) and ensemble learning for community-level data and healthcare claims data, along with the conduct of simulation studies and practical examples for causal inference research in medical data. Specifically, we resolve two common questions: how to estimate the community-based causal effect of community-level stochastic interventions, and how to take advantage of data-adaptive ensemble learning to problems of estimation in public health data. Chapter 1 begins by reviewing the targeted maximum likelihood estimation (TMLE). We also provide a more detailed summary to each of the rest of the chapters. Chapter 2 studies the framework for target maximum likelihood estimation...
Robust inference of a low-dimensional parameter in a large semi-parametric model relies on externa...
In this thesis, we argue for the use of loss-based semi-parametric estimation methods as an alternat...
Recent advances in causal machine learning leverage observational data to estimate heterogeneous tre...
This dissertation discusses the Targeted maximum Likelihood Estimation (TMLE) and ensemble learning ...
This dissertation develops modern statistical methods, targeted maximum likelihood estimation (TMLE)...
We often seek to estimate the impact of an exposure naturally occurring or randomly assigned at the ...
Intensive longitudinal data, defined as time-varying data collected frequently over time, holds imme...
Suppose that we observe a population of causally connected units. On each unit at each time-point on...
This dissertation focuses on modern causal inference under uncertainty and data restrictions, with a...
ObjectiveConsistent estimation of causal effects with inverse probability weighting estimators is kn...
This dissertation focuses on three important issues in causal inference. The three chapters focus on...
When estimating the average effect of a binary treatment (or exposure), methods that incorporate pro...
When estimating the average effect of a binary treatment (or exposure) on an outcome, methods that i...
This dissertation is concerned with application of robust semi-parametric methods to problems of est...
The focus of this dissertation is on extending targeted learning to settings with complex unknown de...
Robust inference of a low-dimensional parameter in a large semi-parametric model relies on externa...
In this thesis, we argue for the use of loss-based semi-parametric estimation methods as an alternat...
Recent advances in causal machine learning leverage observational data to estimate heterogeneous tre...
This dissertation discusses the Targeted maximum Likelihood Estimation (TMLE) and ensemble learning ...
This dissertation develops modern statistical methods, targeted maximum likelihood estimation (TMLE)...
We often seek to estimate the impact of an exposure naturally occurring or randomly assigned at the ...
Intensive longitudinal data, defined as time-varying data collected frequently over time, holds imme...
Suppose that we observe a population of causally connected units. On each unit at each time-point on...
This dissertation focuses on modern causal inference under uncertainty and data restrictions, with a...
ObjectiveConsistent estimation of causal effects with inverse probability weighting estimators is kn...
This dissertation focuses on three important issues in causal inference. The three chapters focus on...
When estimating the average effect of a binary treatment (or exposure), methods that incorporate pro...
When estimating the average effect of a binary treatment (or exposure) on an outcome, methods that i...
This dissertation is concerned with application of robust semi-parametric methods to problems of est...
The focus of this dissertation is on extending targeted learning to settings with complex unknown de...
Robust inference of a low-dimensional parameter in a large semi-parametric model relies on externa...
In this thesis, we argue for the use of loss-based semi-parametric estimation methods as an alternat...
Recent advances in causal machine learning leverage observational data to estimate heterogeneous tre...