Propensity Score Matching (PSM) has become a popular approach to estimation of causal effects. It relies on the assumption that selection into a treatment can be explained purely in terms of observable characteristics (the “unconfoundedness assumption”) and on the property that balancing on the propensity score is equivalent to balancing on the observed covariates. Several applications in social sciences are characterized by a hierarchical structure of data: units at the first level (e.g., individuals) clustered into groups (e.g., provinces). In this paper we explore the use of multilevel models for the estimation of the propensity score for such hierarchical data when one or more relevant cluster-level variables is unobserved. We compare t...
Through three sets of simulations, this dissertation evaluates the effectiveness of alternative appr...
This paper considers causal inference and sample selection bias in non-experimental settings in whic...
Many research studies aim to draw causal inferences using data from large, nationally representative...
Propensity Score Matching (PSM) has become a popular approach to estimation of causal effects. It re...
Propensity Score Matching (PSM) has become a popular approach to estimation of causal effects. It r...
Propensity Score Matching (PSM) has become a popular approach to estimation of causal effects. It r...
Propensity score analysis has been used to minimize the selection bias in observational studies to i...
Propensity score matching is commonly used to estimate causal effects of treatments. However, when u...
Propensity score methods are a popular tool for reducing confounding bias of treatment effect estima...
When researchers are unable to randomly assign students to treatment conditions, selection bias is i...
There is increasing demand to investigate questions in observational study. The propensity score is ...
Propensity score weighting is a tool for causal inference to adjust for measured confounders in obse...
Recent calls for accountability have focused on scientifically based research that isolates causal m...
This paper considers casual inference and sample selection bias in non-experimental settings in whic...
This paper considers causal inference and sample selection bias in non-experimental settings in whic...
Through three sets of simulations, this dissertation evaluates the effectiveness of alternative appr...
This paper considers causal inference and sample selection bias in non-experimental settings in whic...
Many research studies aim to draw causal inferences using data from large, nationally representative...
Propensity Score Matching (PSM) has become a popular approach to estimation of causal effects. It re...
Propensity Score Matching (PSM) has become a popular approach to estimation of causal effects. It r...
Propensity Score Matching (PSM) has become a popular approach to estimation of causal effects. It r...
Propensity score analysis has been used to minimize the selection bias in observational studies to i...
Propensity score matching is commonly used to estimate causal effects of treatments. However, when u...
Propensity score methods are a popular tool for reducing confounding bias of treatment effect estima...
When researchers are unable to randomly assign students to treatment conditions, selection bias is i...
There is increasing demand to investigate questions in observational study. The propensity score is ...
Propensity score weighting is a tool for causal inference to adjust for measured confounders in obse...
Recent calls for accountability have focused on scientifically based research that isolates causal m...
This paper considers casual inference and sample selection bias in non-experimental settings in whic...
This paper considers causal inference and sample selection bias in non-experimental settings in whic...
Through three sets of simulations, this dissertation evaluates the effectiveness of alternative appr...
This paper considers causal inference and sample selection bias in non-experimental settings in whic...
Many research studies aim to draw causal inferences using data from large, nationally representative...