In the context of treatment effect estimation, this paper proposes a new methodology to recover the counterfactual distribution when there is a single (or a few) treated unit and possibly a high-dimensional number of potential controls observed in a panel structure. The methodology accommodates, albeit does not require, the number of units to be larger than the number of time periods (high-dimensional setup). As opposed to model only the conditional mean, we propose to model the entire conditional quantile function (CQF) in the absence of intervention and estimate it using the pre-intervention period using a penalized regression. We derive non-asymptotic bounds for the estimated CQF valid uniformly over the quantiles, allowing the practitio...
Many popular methods for building confidence intervals on causal effects under high-dimensional conf...
We describe a novel approach to nonparametric point and interval estimation of a treatment effect in...
We consider the identification of counterfactual distributions and treatment effects when the outcom...
Recently, there has been growing interest in developing statistical tools to conduct counterfactual ...
We develop methods for estimation, inference and optimization of causal effects from observational d...
Abstract. We develop inference procedures for policy analysis based on regression methods. We consid...
Abstract. In this paper we develop procedures for performing inference in regression models about ho...
Estimating the counterfactual outcome of treatment is essential for decision-making in public health...
Abstract. In this paper we develop procedures for performing inference in regression models about ho...
In this paper, we provide efficient estimators and honest confidence bands for a variety of treatmen...
In a randomized clinical trial, a statistic that measures the proportion of treatment effect on the ...
This paper considers identification of treatment effects when the outcome variables and covari-ates ...
This paper proposes a confidence interval construction for heterogeneous treatment effects in the co...
This paper proposes estimators of unconditional distribution functions in the presence of covariates...
We consider the problem of counterfactual inference in sequentially designed experiments wherein a c...
Many popular methods for building confidence intervals on causal effects under high-dimensional conf...
We describe a novel approach to nonparametric point and interval estimation of a treatment effect in...
We consider the identification of counterfactual distributions and treatment effects when the outcom...
Recently, there has been growing interest in developing statistical tools to conduct counterfactual ...
We develop methods for estimation, inference and optimization of causal effects from observational d...
Abstract. We develop inference procedures for policy analysis based on regression methods. We consid...
Abstract. In this paper we develop procedures for performing inference in regression models about ho...
Estimating the counterfactual outcome of treatment is essential for decision-making in public health...
Abstract. In this paper we develop procedures for performing inference in regression models about ho...
In this paper, we provide efficient estimators and honest confidence bands for a variety of treatmen...
In a randomized clinical trial, a statistic that measures the proportion of treatment effect on the ...
This paper considers identification of treatment effects when the outcome variables and covari-ates ...
This paper proposes a confidence interval construction for heterogeneous treatment effects in the co...
This paper proposes estimators of unconditional distribution functions in the presence of covariates...
We consider the problem of counterfactual inference in sequentially designed experiments wherein a c...
Many popular methods for building confidence intervals on causal effects under high-dimensional conf...
We describe a novel approach to nonparametric point and interval estimation of a treatment effect in...
We consider the identification of counterfactual distributions and treatment effects when the outcom...