University of Minnesota Ph.D. dissertation. July 2018. Major: Biostatistics. Advisors: Julian Wolfson, David Vock. 1 computer file (PDF); x, 102 pages.Estimating the causal effect of a binary intervention or action (referred to as a "treatment") on a continuous outcome is often an investigator's primary goal. Randomized trials are ideal for estimating causal effects because randomization eliminates selection bias in treatment assignment. However, randomized trials are not always ethically or practically possible, and observational data must be used to estimate the causal effect of treatment. Unbiased estimation of causal effects with observational data requires adjustment for confounding variables that are related to both the outcome and tr...
This dissertation consists of three projects related to causal inference based on observational data...
We consider the situation of a randomized clinical trial with a moderate number of baseline covariat...
Confounding control is crucial and yet challenging for causal inference based on observational studi...
University of Minnesota Ph.D. dissertation. July 2014. Advisor: Yuhong Yang. Major: Statistics. 1 co...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
This dissertation presents three new methodologies for analyzing randomized controlled trials using ...
This dissertation consists of three chapters with a focus on the identification and estimation of ca...
In the causal adjustment setting, variable selection techniques based only on the outcome or only on...
The first part of my dissertation focuses on post-randomization modification of intent-to-treat effe...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...
The aim of causal effect estimation is to find the true impact of a treatment or exposure. Observati...
Two approaches to causal inference in the presence of non-random assignment are presented: The Prope...
This dissertation consists of three chapters that study treatment effect estimation and treatment ch...
In this dissertation, I consider inference about target parameters under three distinct study design...
A fundamental assumption used in causal inference with observational data is that treatment assignme...
This dissertation consists of three projects related to causal inference based on observational data...
We consider the situation of a randomized clinical trial with a moderate number of baseline covariat...
Confounding control is crucial and yet challenging for causal inference based on observational studi...
University of Minnesota Ph.D. dissertation. July 2014. Advisor: Yuhong Yang. Major: Statistics. 1 co...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
This dissertation presents three new methodologies for analyzing randomized controlled trials using ...
This dissertation consists of three chapters with a focus on the identification and estimation of ca...
In the causal adjustment setting, variable selection techniques based only on the outcome or only on...
The first part of my dissertation focuses on post-randomization modification of intent-to-treat effe...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...
The aim of causal effect estimation is to find the true impact of a treatment or exposure. Observati...
Two approaches to causal inference in the presence of non-random assignment are presented: The Prope...
This dissertation consists of three chapters that study treatment effect estimation and treatment ch...
In this dissertation, I consider inference about target parameters under three distinct study design...
A fundamental assumption used in causal inference with observational data is that treatment assignme...
This dissertation consists of three projects related to causal inference based on observational data...
We consider the situation of a randomized clinical trial with a moderate number of baseline covariat...
Confounding control is crucial and yet challenging for causal inference based on observational studi...