This paper demonstrates the identification of causal mechanisms of a binary treatment under selection on observables, (primarily) based on inverse probability weighting; i.e. we consider the average indirect effect of the treatment, which operates through an intermediate variable (or mediator) that is situated on the causal path between the treatment and the outcome, as well as the (unmediated) direct effect. Even under random treatment assignment, subsequent selection into the mediator is generally non-random such that causal mechanisms are only identified when controlling for confounders of the mediator and the outcome. To tackle this issue, units are weighted by the inverse of their conditional treatment propensity given the media...
Estimation of the effect of a treatment or intervention on a given outcome is an important topic in ...
We describe the R package ipw for estimating inverse probability weights. We show how to use the pac...
Mediation analysis, or more generally models with direct and indirect effects, are commonly used in ...
Using a sequential conditional independence assumption, this paper discusses fully nonparametric est...
We consider estimation of the causal effect of a sequential binary treatment (typically correspondin...
We describe R package “causalweight” for causal inference based on inverse probability weighting (I...
Understanding the mechanisms through which treatment effects come about is crucial for designing eff...
The causal effect of a treatment on an outcome is generally mediated by several intermediate variabl...
This paper considers the evaluation of direct and indirect treatment effects, also known as mediati...
Causal inference methods for treatment effect estimation usually assume independent experimental uni...
In this paper, we consider recent progress in estimating the average treatment effect when extreme i...
This paper proposes semi- and nonparametric methods for disentangling the total causal effect of a ...
The paper discusses the non‐parametric identification of causal direct and indirect effects of a bi...
Using a comprehensive simulation study based on empirical data, this article investigates the finite ...
We propose a novel approach for causal mediation analysis based on changes-in- changes assumptions ...
Estimation of the effect of a treatment or intervention on a given outcome is an important topic in ...
We describe the R package ipw for estimating inverse probability weights. We show how to use the pac...
Mediation analysis, or more generally models with direct and indirect effects, are commonly used in ...
Using a sequential conditional independence assumption, this paper discusses fully nonparametric est...
We consider estimation of the causal effect of a sequential binary treatment (typically correspondin...
We describe R package “causalweight” for causal inference based on inverse probability weighting (I...
Understanding the mechanisms through which treatment effects come about is crucial for designing eff...
The causal effect of a treatment on an outcome is generally mediated by several intermediate variabl...
This paper considers the evaluation of direct and indirect treatment effects, also known as mediati...
Causal inference methods for treatment effect estimation usually assume independent experimental uni...
In this paper, we consider recent progress in estimating the average treatment effect when extreme i...
This paper proposes semi- and nonparametric methods for disentangling the total causal effect of a ...
The paper discusses the non‐parametric identification of causal direct and indirect effects of a bi...
Using a comprehensive simulation study based on empirical data, this article investigates the finite ...
We propose a novel approach for causal mediation analysis based on changes-in- changes assumptions ...
Estimation of the effect of a treatment or intervention on a given outcome is an important topic in ...
We describe the R package ipw for estimating inverse probability weights. We show how to use the pac...
Mediation analysis, or more generally models with direct and indirect effects, are commonly used in ...