We consider inference on optimal treatment assignments. Our methods allow for inference on the treatment assignment rule that would be optimal given knowledge of the population treatment effect in a general setting. The procedure uses multiple hypothesis testing methods to determine a subset of the population for which assignment to treatment can be determined to be optimal after conditioning on all available information, with a prespecified level of confidence. A monte carlo study confirms that the inference procedure has good small sample behavior. We apply the method to study the Mexican conditional cash transfer program Progresa
This thesis is devoted to designing and analyzing statistical decision rules to improve public polic...
This dissertation consists of three chapters that study treatment effect estimation and treatment ch...
This paper develops asymptotic optimality theory for statistical treatment rules in smooth parametri...
We consider inference on optimal treatment assignments. Our methods allow for inference on the treat...
We consider inference on optimal treatment assignments. Our methods allow for inference on the treat...
This paper develops asymptotic optimality theory for statistical treatment rules in smooth parametri...
This paper studies statistical decisions for dynamic treatment assignment problems. Many policies in...
This paper proposes a novel method to estimate individualised treatment assignment rules. The method...
This article studies the data-adaptive inference of an optimal treatment rule. A treatment rule is a...
This article studies the data-adaptive inference of an optimal treatment rule. A treatment rule is ...
Standard experimental designs are geared toward point estimation and hypothesis testing, while bandi...
An important objective of empirical research on treatment response is to provide decision makers wit...
When multiple treatment alternatives are available for a disease, an obvious question is which alter...
Advisors: Sanjib Basu.Committee members: Alan Polansky; Duchwan Ryu; Jeffrey Thunder.Includes biblio...
One of the main objectives of empirical analysis of experiments and quasi-experiments is to inform p...
This thesis is devoted to designing and analyzing statistical decision rules to improve public polic...
This dissertation consists of three chapters that study treatment effect estimation and treatment ch...
This paper develops asymptotic optimality theory for statistical treatment rules in smooth parametri...
We consider inference on optimal treatment assignments. Our methods allow for inference on the treat...
We consider inference on optimal treatment assignments. Our methods allow for inference on the treat...
This paper develops asymptotic optimality theory for statistical treatment rules in smooth parametri...
This paper studies statistical decisions for dynamic treatment assignment problems. Many policies in...
This paper proposes a novel method to estimate individualised treatment assignment rules. The method...
This article studies the data-adaptive inference of an optimal treatment rule. A treatment rule is a...
This article studies the data-adaptive inference of an optimal treatment rule. A treatment rule is ...
Standard experimental designs are geared toward point estimation and hypothesis testing, while bandi...
An important objective of empirical research on treatment response is to provide decision makers wit...
When multiple treatment alternatives are available for a disease, an obvious question is which alter...
Advisors: Sanjib Basu.Committee members: Alan Polansky; Duchwan Ryu; Jeffrey Thunder.Includes biblio...
One of the main objectives of empirical analysis of experiments and quasi-experiments is to inform p...
This thesis is devoted to designing and analyzing statistical decision rules to improve public polic...
This dissertation consists of three chapters that study treatment effect estimation and treatment ch...
This paper develops asymptotic optimality theory for statistical treatment rules in smooth parametri...