The assumption of positivity or experimental treatment assignment requires that observed treatment levels vary within confounder strata. This article discusses the positivity assumption in the context of assessing model and parameter-specific identifiability of causal effects. Positivity violations occur when certain subgroups in a sample rarely or never receive some treatments of interest. The resulting sparsity in the data may increase bias with or without an increase in variance and can threaten valid inference. The parametric bootstrap is presented as a tool to assess the severity of such threats and its utility as a diagnostic is explored using simulated data. Several approaches for improving the identifiability of parameters in the presen...
Generalized linear models are often assumed to fit propensity scores, which are used to compute inve...
Description of prior research and/or its intellectual context and/or its policy context. In observat...
In the analysis of observational studies, propensity score subclassification has been shown to be a ...
Observational data are increasingly used to evaluate the effects of treatments on health outcomes. C...
Data-adaptive methods have been proposed to estimate nuisance parameters when using doubly robust se...
Observational studies often present the challenge of data sparsity due to violations of the positivi...
Positivity, or the experimental treatment assignment assumption, requires that there be both exposed...
The inverse probability of treatment weighted (IPTW) estimator can be used to make causal inferences...
In non-randomized studies, estimation of treatment effects generally requires adjustment for imbalan...
Suppose one wishes to estimate a causal parameter given a sample of observations. This requires maki...
This dissertation research has focused on theoretical and practical developments of semiparametric m...
Frailty, a poorly measured confounder in older patients, can promote treatment in some situations an...
The assessment of treatment effects from observational studies may be biased with patients not rando...
In behavioral medicine trials, such as smoking cessation trials, two or more active treatments are o...
Deviations from assigned treatment occur often in clinical trials. In such a setting, the traditiona...
Generalized linear models are often assumed to fit propensity scores, which are used to compute inve...
Description of prior research and/or its intellectual context and/or its policy context. In observat...
In the analysis of observational studies, propensity score subclassification has been shown to be a ...
Observational data are increasingly used to evaluate the effects of treatments on health outcomes. C...
Data-adaptive methods have been proposed to estimate nuisance parameters when using doubly robust se...
Observational studies often present the challenge of data sparsity due to violations of the positivi...
Positivity, or the experimental treatment assignment assumption, requires that there be both exposed...
The inverse probability of treatment weighted (IPTW) estimator can be used to make causal inferences...
In non-randomized studies, estimation of treatment effects generally requires adjustment for imbalan...
Suppose one wishes to estimate a causal parameter given a sample of observations. This requires maki...
This dissertation research has focused on theoretical and practical developments of semiparametric m...
Frailty, a poorly measured confounder in older patients, can promote treatment in some situations an...
The assessment of treatment effects from observational studies may be biased with patients not rando...
In behavioral medicine trials, such as smoking cessation trials, two or more active treatments are o...
Deviations from assigned treatment occur often in clinical trials. In such a setting, the traditiona...
Generalized linear models are often assumed to fit propensity scores, which are used to compute inve...
Description of prior research and/or its intellectual context and/or its policy context. In observat...
In the analysis of observational studies, propensity score subclassification has been shown to be a ...