Political scientists are increasingly interested in causal mediation, and to this end, recent studies focus on estimating a quantity called the controlled direct effect (CDE). The CDE measures the strength of the causal relationship between a treatment and outcome when a mediator is fixed at a given value. To estimate the CDE, Vansteelandt (2009) and Joffe and Greene (2009) developed the method of sequential g-estimation, which was introduced to political science by Acharya et al. (2016). In this letter, we propose an alternative method called “regression-with-residuals” (RWR) for estimating the CDE. In special cases, we show that these two methods are algebraically equivalent. Yet, unlike sequential g-estimation, RWR can easily accommodate...
When regression models adjust for mediators on the causal path from exposure to outcome, the regress...
Early in the twentieth century, Fisher and Neyman demonstrated how to infer effects of agricultural ...
Recent work has considerably advanced the definition, identification and estimation of controlled di...
When working with panel data, many researchers wish to estimate the direct effects of time-varying f...
Researchers seeking to establish causal relationships frequently control for variables on the purpor...
This thesis presents five independent essays that advance causal inference in political science. It ...
Causal mediation analysis is routinely conducted by applied researchers in a variety of disciplines....
In a randomized study with longitudinal data on a mediator and outcome, estimating the direct effect...
Models designed for limited dependent variables are increasingly common in political science. Resea...
Data and code to replicate findings from "How to Make Causal Inferences with Time-Series Cross-Secti...
In typical political experiments, researchers randomize a set of households, precincts, or individua...
The estimation of causal effects has a revered place in all fields of empirical political science, b...
Traditionally in the social sciences, causal mediation analysis has been formulated, understood, and...
Most empirical work focuses on the estimation of average treatment effects (ATE). In this dissertat...
Researchers investigating causal mechanisms in survey experiments often rely on non-randomized quant...
When regression models adjust for mediators on the causal path from exposure to outcome, the regress...
Early in the twentieth century, Fisher and Neyman demonstrated how to infer effects of agricultural ...
Recent work has considerably advanced the definition, identification and estimation of controlled di...
When working with panel data, many researchers wish to estimate the direct effects of time-varying f...
Researchers seeking to establish causal relationships frequently control for variables on the purpor...
This thesis presents five independent essays that advance causal inference in political science. It ...
Causal mediation analysis is routinely conducted by applied researchers in a variety of disciplines....
In a randomized study with longitudinal data on a mediator and outcome, estimating the direct effect...
Models designed for limited dependent variables are increasingly common in political science. Resea...
Data and code to replicate findings from "How to Make Causal Inferences with Time-Series Cross-Secti...
In typical political experiments, researchers randomize a set of households, precincts, or individua...
The estimation of causal effects has a revered place in all fields of empirical political science, b...
Traditionally in the social sciences, causal mediation analysis has been formulated, understood, and...
Most empirical work focuses on the estimation of average treatment effects (ATE). In this dissertat...
Researchers investigating causal mechanisms in survey experiments often rely on non-randomized quant...
When regression models adjust for mediators on the causal path from exposure to outcome, the regress...
Early in the twentieth century, Fisher and Neyman demonstrated how to infer effects of agricultural ...
Recent work has considerably advanced the definition, identification and estimation of controlled di...