Generalized linear models are often assumed to fit propensity scores, which are used to compute inverse probability weighted (IPW) estimators. To derive the asymptotic properties of IPW estimators, the propensity score is supposed to be bounded away from zero. This condition is known in the literature as strict positivity (or positivity assumption), and, in practice, when it does not hold, IPW estimators are very unstable and have a large variability. Although strict positivity is often assumed, it is not upheld when some of the covariates are unbounded. In real data sets, a data-generating process that violates the positivity assumption may lead to wrong inference because of the inaccuracy in the estimations. In this work, we attempt to co...
To estimate causal effects accurately, adjusting covariates is one of the important steps in observa...
In this article, we study the causal inference problem with a continuous treatment variable using pr...
Central role of propensity score in causal inference Adjusting for observed confounding in observati...
The inverse probability of treatment weighted (IPTW) estimator can be used to make causal inferences...
Causal inference methodologies have been developed for the past decade to estimate the unconfounded ...
Statistical causal inference from an observational study often requires adjustment for a possibly mu...
Propensity score methods have become a part of the standard toolkit for applied researchers who wis...
Methods based on propensity score (PS) have become increasingly popular as a tool for causal inferen...
The augmented inverse weighting method is one of the most popular methods for estimating the mean of...
In this paper, we consider recent progress in estimating the average treatment effect when extreme i...
This thesis consists of four papers that are related to commonly used propensity score-based estimat...
In this article we develop the theoretical properties of the propensity function, which is a general...
Propensity score matching and inverse-probability weighting are popular methods for causal inference...
In this article we develop the theoretical properties of the propensity function, which is a general...
Commonly used semi-parametric estimators of causal effects, specify parametric models for the prope...
To estimate causal effects accurately, adjusting covariates is one of the important steps in observa...
In this article, we study the causal inference problem with a continuous treatment variable using pr...
Central role of propensity score in causal inference Adjusting for observed confounding in observati...
The inverse probability of treatment weighted (IPTW) estimator can be used to make causal inferences...
Causal inference methodologies have been developed for the past decade to estimate the unconfounded ...
Statistical causal inference from an observational study often requires adjustment for a possibly mu...
Propensity score methods have become a part of the standard toolkit for applied researchers who wis...
Methods based on propensity score (PS) have become increasingly popular as a tool for causal inferen...
The augmented inverse weighting method is one of the most popular methods for estimating the mean of...
In this paper, we consider recent progress in estimating the average treatment effect when extreme i...
This thesis consists of four papers that are related to commonly used propensity score-based estimat...
In this article we develop the theoretical properties of the propensity function, which is a general...
Propensity score matching and inverse-probability weighting are popular methods for causal inference...
In this article we develop the theoretical properties of the propensity function, which is a general...
Commonly used semi-parametric estimators of causal effects, specify parametric models for the prope...
To estimate causal effects accurately, adjusting covariates is one of the important steps in observa...
In this article, we study the causal inference problem with a continuous treatment variable using pr...
Central role of propensity score in causal inference Adjusting for observed confounding in observati...