A fundamental assumption used in causal inference with observational data is that treatment assignment is ignorable given measured confounding variables. This assumption of no missing confounders is plausible if a large number of baseline covariates are included in the analysis, as we often have no prior knowledge of which variables can be important confounders. Thus, estimation of treatment effects with a large number of covariates has received considerable attention in recent years. Most existing methods require specifying certain parametric models involving the outcome, treatment and confounding variables, and employ a variable selection procedure to identify confounders. However, selection of a proper set of confounders depends on corre...
One fundamental problem in causal inference is the treatment effect estimation in observational stud...
Summary. In the causal adjustment setting, variable selection techniques based on either the outcome...
Many popular methods for building confidence intervals on causal effects under high-dimensional conf...
© Institute of Mathematical Statistics, 2019. A fundamental assumption used in causal inference with...
When estimating the treatment effect in an observational study, we use a semi-parametric locally eff...
In observational studies, the causal effect of a treatment may be confounded with variables that are...
Drawing inferences about the effects of exposures or treatments is a common challenge in many scient...
To estimate causal treatment effects, we propose a new matching approach based on the reduced covari...
Abstract. We propose robust methods for inference on the effect of a treatment variable on a scalar ...
Often the research interest in causal inference is on the regression causal effect, which is the mea...
In the causal adjustment setting, variable selection techniques based only on the outcome or only on...
This thesis makes contributions to the statistical research field of causal inference in observation...
Thesis (Ph.D.)--University of Washington, 2016-03Most complex observational and randomized studies a...
We propose robust methods for inference about the effect of a treatment variable on a scalar outcome...
Inferring the causal effect of a treatment on an outcome in an observational study requires adjustin...
One fundamental problem in causal inference is the treatment effect estimation in observational stud...
Summary. In the causal adjustment setting, variable selection techniques based on either the outcome...
Many popular methods for building confidence intervals on causal effects under high-dimensional conf...
© Institute of Mathematical Statistics, 2019. A fundamental assumption used in causal inference with...
When estimating the treatment effect in an observational study, we use a semi-parametric locally eff...
In observational studies, the causal effect of a treatment may be confounded with variables that are...
Drawing inferences about the effects of exposures or treatments is a common challenge in many scient...
To estimate causal treatment effects, we propose a new matching approach based on the reduced covari...
Abstract. We propose robust methods for inference on the effect of a treatment variable on a scalar ...
Often the research interest in causal inference is on the regression causal effect, which is the mea...
In the causal adjustment setting, variable selection techniques based only on the outcome or only on...
This thesis makes contributions to the statistical research field of causal inference in observation...
Thesis (Ph.D.)--University of Washington, 2016-03Most complex observational and randomized studies a...
We propose robust methods for inference about the effect of a treatment variable on a scalar outcome...
Inferring the causal effect of a treatment on an outcome in an observational study requires adjustin...
One fundamental problem in causal inference is the treatment effect estimation in observational stud...
Summary. In the causal adjustment setting, variable selection techniques based on either the outcome...
Many popular methods for building confidence intervals on causal effects under high-dimensional conf...