Estimation of treatment effects in randomized studies is often hampered by possible selection bias induced by conditioning on or adjusting for a variable measured post-randomization. One approach to obviate such selection bias is to consider inference about treatment effects within principal strata, i.e., principal effects. A challenge with this approach is that without strong assumptions principal effects are not identifiable from the observable data. In settings where such assumptions are dubious, identifiable large sample bounds may be the preferred target of inference. In practice these bounds may be wide and not particularly informative. In this work we consider whether bounds on principal effects can be improved by adjusting for a cat...
A common problem when conducting an experiment or observational study for the purpose of causal infe...
In some clinical trials, the primary outcome of interest may only be measured in a subset of subject...
In many empirical problems, the evaluation of treatment effects is complicated by sample selection ...
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...
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...
Estimation of treatment effects in randomized studies is often hampered by possible selection bias i...
In randomized studies, treatment comparisons conditional on intermediate post-randomization outcomes...
In randomized studies, treatment comparisons conditional on intermediate post-randomization outcomes...
Establishing statistical methods for quantifying the effects of interventions to prevent infectious ...
This dissertation considers conducting inference about the effect of a treatment (or exposure) on an...
This dissertation considers conducting inference about the effect of a treatment (or exposure) on an...
This paper considers conducting inference about the effect of a treatment (or exposure) on an outcom...
A common problem when conducting an experiment or observational study for the purpose of causal infe...
A common problem when conducting an experiment or observational study for the purpose of causal infe...
In some clinical trials, the primary outcome of interest may only be measured in a subset of subject...
In many empirical problems, the evaluation of treatment effects is complicated by sample selection ...
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...
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...
Estimation of treatment effects in randomized studies is often hampered by possible selection bias i...
In randomized studies, treatment comparisons conditional on intermediate post-randomization outcomes...
In randomized studies, treatment comparisons conditional on intermediate post-randomization outcomes...
Establishing statistical methods for quantifying the effects of interventions to prevent infectious ...
This dissertation considers conducting inference about the effect of a treatment (or exposure) on an...
This dissertation considers conducting inference about the effect of a treatment (or exposure) on an...
This paper considers conducting inference about the effect of a treatment (or exposure) on an outcom...
A common problem when conducting an experiment or observational study for the purpose of causal infe...
A common problem when conducting an experiment or observational study for the purpose of causal infe...
In some clinical trials, the primary outcome of interest may only be measured in a subset of subject...
In many empirical problems, the evaluation of treatment effects is complicated by sample selection ...