We propose a new general approach for estimating the effect of a binary treat-ment on a continuous and potentially highly skewed response variable, the generalized quantile treatment effect (GQTE). The GQTE is defined as the difference between a function of the quantiles under the two treatment conditions. As such, it represents a generalization over the standard approaches typically used for estimating a treatment effect (i.e., the average treatment effect and the quantile treatment effect) because it allows the comparison of any arbitrary characteristic of the outcome’s distribution under the two treatments. Following (Dominici et al., 2005), we assume that a pre-specified transformation of the two quantiles is modeled as a smooth functio...
In this paper, we explore partial identification and inference for the quantile of treatment effects...
M.Sc. (Mathematical Statistics)Comparison of two distributions via use of the quantile comparison fu...
The ability of quantile regression models to characterize the heterogeneous impact of variables on d...
We propose a new general approach for estimating the effect of a bi- nary treatment on a continuous ...
Abstract: The analysis of treatment effect at various quantiles for two or more treatment condition...
This paper introduces an instrumental variables estimator for the effect of a binary treatment on th...
This paper develops a model of causal quantile treatment eects in the presence of endogeneity. The c...
This paper develops a model of quantile treatment effects with treatment endo-geneity. The model pri...
This paper describes a method to estimate quantile treatment effects of a binary treatment variable ...
In this article, we present a new command, qcte, that implements several methods for estimation and ...
In this paper, we propose inverse probability weighted estimators for the distribution functions of ...
This paper develops estimators for quantile treatment effects under the identifying restriction that...
The distribution of treatment effects extends the prevailing focus on average treatment effects to t...
In this paper, we extend the linear M-quantile random intercept model (MQRE) to discrete data and us...
© 2019, © 2019 American Statistical Association. Quantile and quantile effect (QE) functions are imp...
In this paper, we explore partial identification and inference for the quantile of treatment effects...
M.Sc. (Mathematical Statistics)Comparison of two distributions via use of the quantile comparison fu...
The ability of quantile regression models to characterize the heterogeneous impact of variables on d...
We propose a new general approach for estimating the effect of a bi- nary treatment on a continuous ...
Abstract: The analysis of treatment effect at various quantiles for two or more treatment condition...
This paper introduces an instrumental variables estimator for the effect of a binary treatment on th...
This paper develops a model of causal quantile treatment eects in the presence of endogeneity. The c...
This paper develops a model of quantile treatment effects with treatment endo-geneity. The model pri...
This paper describes a method to estimate quantile treatment effects of a binary treatment variable ...
In this article, we present a new command, qcte, that implements several methods for estimation and ...
In this paper, we propose inverse probability weighted estimators for the distribution functions of ...
This paper develops estimators for quantile treatment effects under the identifying restriction that...
The distribution of treatment effects extends the prevailing focus on average treatment effects to t...
In this paper, we extend the linear M-quantile random intercept model (MQRE) to discrete data and us...
© 2019, © 2019 American Statistical Association. Quantile and quantile effect (QE) functions are imp...
In this paper, we explore partial identification and inference for the quantile of treatment effects...
M.Sc. (Mathematical Statistics)Comparison of two distributions via use of the quantile comparison fu...
The ability of quantile regression models to characterize the heterogeneous impact of variables on d...