This dissertation studies the problem of causal inference for ordinal outcomes. Chapter 1 focuses on the sharp null hypothesis of no treatment effect on all experimental units, and develops a systematic procedure for closed-form construction of sequences of alternative hypotheses in increasing orders of their departures from the sharp null hypothesis. The resulted construction procedure helps assessing the powers of randomization tests with ordinal outcomes. Chapter 2 proposes two new causal parameters, i.e., the probabilities that the treatment is beneficial and strictly beneficial for the experimental units, and derives their sharp bounds using only the marginal distributions, without imposing any assumptions on the joint distribution of ...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
Noncompliance is a common problem in randomized trials. When there is noncompliance, there is often ...
Quantification, i.e., the task of training predictors of the class prevalence values in sets of unla...
Assessing the causal effects of interventions on ordinal outcomes is an important objective of many ...
In randomized controlled trials, ordinal outcomes are commonly used as primary endpoints to measure ...
This manuscript includes three topics in causal inference, all of which are under the randomization ...
This dissertation presents three new methodologies for analyzing randomized controlled trials using ...
We present a general method for estimating the effect of a treatment on an ordinal outcome in random...
Causal approaches based on the potential outcome framework provide a useful tool for addressing nonc...
Causal inference is a science with multi-disciplinary evolution and applications. On the one hand, i...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...
Many scientific questions are to understand and reveal the causal mechanisms from observational stud...
Two approaches to causal inference in the presence of non-random assignment are presented: The Prope...
In this manuscript we seek to relax some of the traditional assumptions associated with the estimati...
The main aim of this course is to provide an introduction to/review of the fundamental theoretical c...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
Noncompliance is a common problem in randomized trials. When there is noncompliance, there is often ...
Quantification, i.e., the task of training predictors of the class prevalence values in sets of unla...
Assessing the causal effects of interventions on ordinal outcomes is an important objective of many ...
In randomized controlled trials, ordinal outcomes are commonly used as primary endpoints to measure ...
This manuscript includes three topics in causal inference, all of which are under the randomization ...
This dissertation presents three new methodologies for analyzing randomized controlled trials using ...
We present a general method for estimating the effect of a treatment on an ordinal outcome in random...
Causal approaches based on the potential outcome framework provide a useful tool for addressing nonc...
Causal inference is a science with multi-disciplinary evolution and applications. On the one hand, i...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...
Many scientific questions are to understand and reveal the causal mechanisms from observational stud...
Two approaches to causal inference in the presence of non-random assignment are presented: The Prope...
In this manuscript we seek to relax some of the traditional assumptions associated with the estimati...
The main aim of this course is to provide an introduction to/review of the fundamental theoretical c...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
Noncompliance is a common problem in randomized trials. When there is noncompliance, there is often ...
Quantification, i.e., the task of training predictors of the class prevalence values in sets of unla...