Continuous treatments (e.g. doses) arise often in practice, but many available causal effect estimators are limited by either requiring parametric models for the effect curve, or by not allowing doubly robust covariate adjustment. We develop a novel kernel smoothing approach that requires only mild smoothness assumptions on the effect curve and still allows for misspecification of either the treatment density or outcome regression. We derive asymptotic properties and give a procedure for data‐driven bandwidth selection. The methods are illustrated via simulation and in a study of the effect of nurse staffing on hospital readmissions penalties
The nonparametric smoothing technique with mixed discrete and continuous regressors is considered. I...
We propose a family of estimators based on kernel ridge regression for nonparametric structural func...
We consider estimation of the causal effect of a binary treatment on an outcome, conditionally on co...
Continuous treatments (e.g. doses) arise often in practice, but many available causal effect estimat...
Continuous treatments (e.g., doses) arise often in practice, but available causal effect estimators ...
In this paper we consider the nonparametric estimation of average treatment effects when there exist...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
This paper addresses the selection of smoothing parameters for estimating the average treatment effe...
We identify the average dose-response function (ADRF) for a continuously valued error-contaminated t...
A fundamental assumption used in causal inference with observational data is that treatment assignme...
<p>This article studies identification, estimation, and inference of general unconditional treatment...
This thesis consists of five papers (Papers A-E) treating problems in non-parametric statistics, esp...
The nonparametric smoothing technique with mixed discrete and continuous regressors is considered. I...
We propose a family of estimators based on kernel ridge regression for nonparametric structural func...
We consider estimation of the causal effect of a binary treatment on an outcome, conditionally on co...
Continuous treatments (e.g. doses) arise often in practice, but many available causal effect estimat...
Continuous treatments (e.g., doses) arise often in practice, but available causal effect estimators ...
In this paper we consider the nonparametric estimation of average treatment effects when there exist...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
Semiparametric doubly robust methods for causal inference help protect against bias due to model mis...
This paper addresses the selection of smoothing parameters for estimating the average treatment effe...
We identify the average dose-response function (ADRF) for a continuously valued error-contaminated t...
A fundamental assumption used in causal inference with observational data is that treatment assignme...
<p>This article studies identification, estimation, and inference of general unconditional treatment...
This thesis consists of five papers (Papers A-E) treating problems in non-parametric statistics, esp...
The nonparametric smoothing technique with mixed discrete and continuous regressors is considered. I...
We propose a family of estimators based on kernel ridge regression for nonparametric structural func...
We consider estimation of the causal effect of a binary treatment on an outcome, conditionally on co...