This paper develops asymptotic optimality theory for statistical treatment rules in smooth parametric and semiparametric models. Manski (2000, 2002, 2004) and Dehejia (2005) have argued that the problem of choosing treatments to maximize social welfare is distinct from the point estimation and hypothesis testing problems usually considered in the treatment effects literature, and advocate formal analysis of decision procedures that map empirical data into treatment choices. We develop large-sample approximations to statistical treatment assignment problems using the limits of experiments framework. We then consider some different loss functions and derive treatment assignment rules that are asymptotically optimal under average and minmax ri...
Suppose the mean responses from m-1 treatment groups in an experiment are to be compared to the mean...
This thesis is devoted to designing and analyzing statistical decision rules to improve public polic...
This article studies the data-adaptive inference of an optimal treatment rule. A treatment rule is ...
This paper develops asymptotic optimality theory for statistical treatment rules in smooth parametri...
This paper develops asymptotic optimality theory for statistical treatment rules in smooth parametri...
Wisconsin-Madison. I have benefitted from the comments of Hidehiko Ichimura and Francesca Molinari. ...
This article studies the data-adaptive inference of an optimal treatment rule. A treatment rule is a...
We consider inference on optimal treatment assignments. Our methods allow for inference on the treat...
An important objective of empirical research on treatment response is to provide decision makers wit...
Policymakers often desire a statistical treatment rule (STR) that determines a treatment assignment ...
Suppose we observe baseline covariates, a binary indicator of treatment, and an outcome occuring aft...
none3Sequential experiments are widely used in biomedical practice but are also highly desirable in ...
We consider challenges that arise in the estimation of the mean outcome under an optimal individuali...
This paper studies the problem of treatment choice between a status quo treatment with a known outco...
We consider inference on optimal treatment assignments. Our methods allow for inference on the treat...
Suppose the mean responses from m-1 treatment groups in an experiment are to be compared to the mean...
This thesis is devoted to designing and analyzing statistical decision rules to improve public polic...
This article studies the data-adaptive inference of an optimal treatment rule. A treatment rule is ...
This paper develops asymptotic optimality theory for statistical treatment rules in smooth parametri...
This paper develops asymptotic optimality theory for statistical treatment rules in smooth parametri...
Wisconsin-Madison. I have benefitted from the comments of Hidehiko Ichimura and Francesca Molinari. ...
This article studies the data-adaptive inference of an optimal treatment rule. A treatment rule is a...
We consider inference on optimal treatment assignments. Our methods allow for inference on the treat...
An important objective of empirical research on treatment response is to provide decision makers wit...
Policymakers often desire a statistical treatment rule (STR) that determines a treatment assignment ...
Suppose we observe baseline covariates, a binary indicator of treatment, and an outcome occuring aft...
none3Sequential experiments are widely used in biomedical practice but are also highly desirable in ...
We consider challenges that arise in the estimation of the mean outcome under an optimal individuali...
This paper studies the problem of treatment choice between a status quo treatment with a known outco...
We consider inference on optimal treatment assignments. Our methods allow for inference on the treat...
Suppose the mean responses from m-1 treatment groups in an experiment are to be compared to the mean...
This thesis is devoted to designing and analyzing statistical decision rules to improve public polic...
This article studies the data-adaptive inference of an optimal treatment rule. A treatment rule is ...