Careful examination of the structure determining treatment choice and outcomes, as advocated by Heckman (2008), is central to the design of treatment effect estimators and, in particular, proper choice of covariates. Here, we demonstrate how causal diagrams developed in the machine learning literature by Judea Pearl and his colleagues, but not so well known to economists, can play a key role in this examination by using these methods to give a detailed analysis of the choice of efficient covariates identified by Hahn (2004)
This study demonstrates the existence of a testable condition for the identification of the causal e...
In respiratory health research, interest often lies in estimating the effect of an exposure on a hea...
We consider estimation of a total causal effect from observational data via covariate adjustment. Id...
Estimation of the effect of a treatment or intervention on a given outcome is an important topic in ...
Abstract: From their inception, causal systems models (more commonly known as structural-equations m...
What is the ideal regression (if any) for estimating average causal effects? We study this question ...
An important goal in the analysis of the causal effect of a treatment on an outcome is to understand...
Recent advances in causal machine learning leverage observational data to estimate heterogeneous tre...
Assessing treatment effects in observational studies is a multifaceted problem that not only involve...
Assessing treatment effects in observational studies is a multifaceted problem that not only involve...
BackgroundCovariate selection to reduce bias in observational data analysis has primarily relied upo...
Identifying effects of actions (treatments) on outcome variables from observational data and causal ...
This thesis makes contributions to the statistical research field of causal inference in observation...
Observational studies often seek to estimate the causal relevance of an “exposure” to an “outcome” o...
Observational studies often seek to estimate the causal relevance of an “exposure” to an “outcome” o...
This study demonstrates the existence of a testable condition for the identification of the causal e...
In respiratory health research, interest often lies in estimating the effect of an exposure on a hea...
We consider estimation of a total causal effect from observational data via covariate adjustment. Id...
Estimation of the effect of a treatment or intervention on a given outcome is an important topic in ...
Abstract: From their inception, causal systems models (more commonly known as structural-equations m...
What is the ideal regression (if any) for estimating average causal effects? We study this question ...
An important goal in the analysis of the causal effect of a treatment on an outcome is to understand...
Recent advances in causal machine learning leverage observational data to estimate heterogeneous tre...
Assessing treatment effects in observational studies is a multifaceted problem that not only involve...
Assessing treatment effects in observational studies is a multifaceted problem that not only involve...
BackgroundCovariate selection to reduce bias in observational data analysis has primarily relied upo...
Identifying effects of actions (treatments) on outcome variables from observational data and causal ...
This thesis makes contributions to the statistical research field of causal inference in observation...
Observational studies often seek to estimate the causal relevance of an “exposure” to an “outcome” o...
Observational studies often seek to estimate the causal relevance of an “exposure” to an “outcome” o...
This study demonstrates the existence of a testable condition for the identification of the causal e...
In respiratory health research, interest often lies in estimating the effect of an exposure on a hea...
We consider estimation of a total causal effect from observational data via covariate adjustment. Id...