Propensity score matching is a widely-used method to measure the effect of a treatment in social as well as health sciences. An important issue in propensity score matching is how to select conditioning variables in estimation of the propensity score. It is commonly mentioned that only variables which affect both program participation and outcomes are selected. Using Monte Carlo simulation, this paper shows that efficiency in estimation of the Average Treatment Effect on the Treated can be gained if all the available observed variables in the outcome equation are included in the estimation of the propensity score
We investigate the finite sample properties of a large number of estimators for the average treatmen...
In applied intervention studies, researchers frequently aim to make inferences about the impact of a...
In education, researchers and evaluators are interested in assessing the impact of programs or inter...
Propensity score matching is a widely-used method to measure the effect of a treatment in social as ...
Propensity score matching is a widely-used method to measure the effect of a treatment in social as ...
Propensity Score Matching (PSM) is a useful method to reduce the impact of Treatment-Selection Bias ...
It is often preferable to simplify the estimation of treatment effects on multiple outcomes by using...
In epidemiological research, the association between treatment and outcome may vary across values of...
Propensity score matching is a relatively new technique used in observational studies to approximate...
Background: In building propensity score (PS) model, inclusion of interaction/square terms in additi...
Despite the growing popularity of propensity score (PS) methods in epidemiology, relatively little h...
We compare propensity-score matching methods with covariate matching estimators. We first discuss th...
The application of propensity score techniques (matching, stratification, and weighting) with multip...
Background: Selecting covariates for adjustment or inclusion in propensity score (PS) analysis is a ...
Propensity score analysis has been used to minimize the selection bias in observational studies to i...
We investigate the finite sample properties of a large number of estimators for the average treatmen...
In applied intervention studies, researchers frequently aim to make inferences about the impact of a...
In education, researchers and evaluators are interested in assessing the impact of programs or inter...
Propensity score matching is a widely-used method to measure the effect of a treatment in social as ...
Propensity score matching is a widely-used method to measure the effect of a treatment in social as ...
Propensity Score Matching (PSM) is a useful method to reduce the impact of Treatment-Selection Bias ...
It is often preferable to simplify the estimation of treatment effects on multiple outcomes by using...
In epidemiological research, the association between treatment and outcome may vary across values of...
Propensity score matching is a relatively new technique used in observational studies to approximate...
Background: In building propensity score (PS) model, inclusion of interaction/square terms in additi...
Despite the growing popularity of propensity score (PS) methods in epidemiology, relatively little h...
We compare propensity-score matching methods with covariate matching estimators. We first discuss th...
The application of propensity score techniques (matching, stratification, and weighting) with multip...
Background: Selecting covariates for adjustment or inclusion in propensity score (PS) analysis is a ...
Propensity score analysis has been used to minimize the selection bias in observational studies to i...
We investigate the finite sample properties of a large number of estimators for the average treatmen...
In applied intervention studies, researchers frequently aim to make inferences about the impact of a...
In education, researchers and evaluators are interested in assessing the impact of programs or inter...