Estimation of average treatment effects under unconfounded or ignorable treatment assignment is often hampered by lack of overlap in the covariate distributions. This lack of overlap can lead to imprecise estimates and can make commonly used estimators sensitive to the choice of specification. In such cases researchers have often used informal methods for trimming the sample. In this paper we develop a systematic approach to addressing lack of overlap. We characterize optimal subsamples for which the average treatment effect can be estimated most precisely, as well as optimally weighted average treatment effects. Under some conditions the optimal selection rules depend solely on the propensity score. For a wide range of distributions a good...
Bibliografia: p. 68-71.The estimation of the average effect of a program or treatment on a variable ...
This paper assesses the e¤ectiveness of unconfoundedness-based estimators of mean e¤ects for multipl...
We consider the problem of estimating an average treatment effect for a target population from a sur...
Estimation of average treatment effects under unconfoundedness or exogenous treatment assignment is ...
Estimation of average treatment effects under unconfoundedness or selection on observ-ables is often...
Estimation of average treatment effects under unconfoundedness or selection on observ-ables is often...
We are interested in estimating the average effect of a binary treatment on a scalar outcome. If ass...
This paper examines various estimators of average treatment effects (ATE) and their sensitivity to d...
Empirical researchers routinely encounter sample selection bias whereby 1) the regressor of interest...
Inverse probability weights are commonly used in epidemiology to estimate causal effects in observat...
Abstract—Recently there has been a surge in econometric work focusing on estimating average treatmen...
In many randomized and observational studies the allocation of treatment among a sample of n indepen...
Choosing the covariates and functional form of the propensity score is an important choice for estim...
A simple shrinkage method is proposed to improve the performance of weighting estimators of the aver...
In many observational studies, analysts estimate treatment effects using propensity scores, e.g. by ...
Bibliografia: p. 68-71.The estimation of the average effect of a program or treatment on a variable ...
This paper assesses the e¤ectiveness of unconfoundedness-based estimators of mean e¤ects for multipl...
We consider the problem of estimating an average treatment effect for a target population from a sur...
Estimation of average treatment effects under unconfoundedness or exogenous treatment assignment is ...
Estimation of average treatment effects under unconfoundedness or selection on observ-ables is often...
Estimation of average treatment effects under unconfoundedness or selection on observ-ables is often...
We are interested in estimating the average effect of a binary treatment on a scalar outcome. If ass...
This paper examines various estimators of average treatment effects (ATE) and their sensitivity to d...
Empirical researchers routinely encounter sample selection bias whereby 1) the regressor of interest...
Inverse probability weights are commonly used in epidemiology to estimate causal effects in observat...
Abstract—Recently there has been a surge in econometric work focusing on estimating average treatmen...
In many randomized and observational studies the allocation of treatment among a sample of n indepen...
Choosing the covariates and functional form of the propensity score is an important choice for estim...
A simple shrinkage method is proposed to improve the performance of weighting estimators of the aver...
In many observational studies, analysts estimate treatment effects using propensity scores, e.g. by ...
Bibliografia: p. 68-71.The estimation of the average effect of a program or treatment on a variable ...
This paper assesses the e¤ectiveness of unconfoundedness-based estimators of mean e¤ects for multipl...
We consider the problem of estimating an average treatment effect for a target population from a sur...