This thesis consists of four papers that are related to commonly used propensity score-based estimators for average causal effects. The first paper starts with the observation that researchers often have access to data containing lots of covariates that are correlated. We therefore study the effect of correlation on the asymptotic variance of an inverse probability weighting and a matching estimator. Under the assumptions of normally distributed covariates, constant causal effect, and potential outcomes and a logit that are linear in the parameters we show that the correlation influences the asymptotic efficiency of the estimators differently, both with regard to direction and magnitude. Further, the strength of the confounding towards the ...
Propensity score matching and inverse-probability weighting are popular methods for causal inference...
In this article, we study the causal inference problem with a continuous treatment variable using pr...
We are interested in estimating the average effect of a binary treatment on a scalar outcome. If ass...
Statistical causal inference from an observational study often requires adjustment for a possibly mu...
Methods based on propensity score (PS) have become increasingly popular as a tool for causal inferen...
Drawing inferences about the effects of treatments and actions is a common challenge in economics, e...
Abstract. We consider methods for estimating causal effects of treatments when treatment assignment ...
Propensity score methods are increasingly used to estimate the effect of a treatment or exposure on ...
In this article we develop the theoretical properties of the propensity function, which is a general...
Drawing inferences about the effects of exposures or treatments is a common challenge in many scient...
For observational studies, the propensity score is the probability of treatment for a given set of b...
Propensity score methods have become a part of the standard toolkit for applied researchers who wis...
In this article we develop the theoretical properties of the propensity function, which is a general...
In a non-randomized study, a propensity score is the probability of an individual case being in the ...
Thesis (Ph.D.)--University of Washington, 2016-03Most complex observational and randomized studies a...
Propensity score matching and inverse-probability weighting are popular methods for causal inference...
In this article, we study the causal inference problem with a continuous treatment variable using pr...
We are interested in estimating the average effect of a binary treatment on a scalar outcome. If ass...
Statistical causal inference from an observational study often requires adjustment for a possibly mu...
Methods based on propensity score (PS) have become increasingly popular as a tool for causal inferen...
Drawing inferences about the effects of treatments and actions is a common challenge in economics, e...
Abstract. We consider methods for estimating causal effects of treatments when treatment assignment ...
Propensity score methods are increasingly used to estimate the effect of a treatment or exposure on ...
In this article we develop the theoretical properties of the propensity function, which is a general...
Drawing inferences about the effects of exposures or treatments is a common challenge in many scient...
For observational studies, the propensity score is the probability of treatment for a given set of b...
Propensity score methods have become a part of the standard toolkit for applied researchers who wis...
In this article we develop the theoretical properties of the propensity function, which is a general...
In a non-randomized study, a propensity score is the probability of an individual case being in the ...
Thesis (Ph.D.)--University of Washington, 2016-03Most complex observational and randomized studies a...
Propensity score matching and inverse-probability weighting are popular methods for causal inference...
In this article, we study the causal inference problem with a continuous treatment variable using pr...
We are interested in estimating the average effect of a binary treatment on a scalar outcome. If ass...