This paper considers conducting inference about the effect of a treatment (or exposure) on an outcome of interest. In the ideal setting where treatment is assigned randomly, under certain assumptions the treatment effect is identifiable from the observable data and inference is straightforward. However, in other settings such as observational studies or randomized trials with noncompliance, the treatment effect is no longer identifiable without relying on untestable assumptions. Nonetheless, the observable data often do provide some information about the effect of treatment, that is, the parameter of interest is partially identifiable. Two approaches are often employed in this setting: (i) bounds are derived for the treatment effect under m...
The nonparametric identification of the local average treatment effect (LATE) hinges on the satisfa...
There has been a recent increase on research focusing on partial identification of average treatment...
BackgroundRandomized controlled trials are often used to inform policy and practice for broad popula...
This dissertation considers conducting inference about the effect of a treatment (or exposure) on an...
In this paper, we study partial identification of the distribution of treatment effects of a binary ...
Suppose one wishes to estimate a causal parameter given a sample of observations. This requires maki...
Estimation of treatment effects in randomized studies is often hampered by possible selection bias i...
Estimation of treatment effects in randomized studies is often hampered by possible selection bias i...
In this paper we present a sensitivity analysis for drawing inferences about parameters that are not...
Background inform policy and practice for broad populations. The average treatment effect (ATE) for...
Based on the conditional independence or unconfoundedness assumption, matching has become a popular ...
Assessing per-protocol treatment effcacy on a time-to-event endpoint is a common objective of random...
This thesis unites three papers discussing different approaches for estimating treatment effects, ei...
Average treatment effect (ATE) is a measure that is frequently used in empirical analysis for measur...
This thesis unites three papers discussing different approaches for estimating treatment effects, ei...
The nonparametric identification of the local average treatment effect (LATE) hinges on the satisfa...
There has been a recent increase on research focusing on partial identification of average treatment...
BackgroundRandomized controlled trials are often used to inform policy and practice for broad popula...
This dissertation considers conducting inference about the effect of a treatment (or exposure) on an...
In this paper, we study partial identification of the distribution of treatment effects of a binary ...
Suppose one wishes to estimate a causal parameter given a sample of observations. This requires maki...
Estimation of treatment effects in randomized studies is often hampered by possible selection bias i...
Estimation of treatment effects in randomized studies is often hampered by possible selection bias i...
In this paper we present a sensitivity analysis for drawing inferences about parameters that are not...
Background inform policy and practice for broad populations. The average treatment effect (ATE) for...
Based on the conditional independence or unconfoundedness assumption, matching has become a popular ...
Assessing per-protocol treatment effcacy on a time-to-event endpoint is a common objective of random...
This thesis unites three papers discussing different approaches for estimating treatment effects, ei...
Average treatment effect (ATE) is a measure that is frequently used in empirical analysis for measur...
This thesis unites three papers discussing different approaches for estimating treatment effects, ei...
The nonparametric identification of the local average treatment effect (LATE) hinges on the satisfa...
There has been a recent increase on research focusing on partial identification of average treatment...
BackgroundRandomized controlled trials are often used to inform policy and practice for broad popula...