Explaining Causal Findings Without Bias: Detecting and Assessing Direct Effects
Stanford University · Harvard University Press
Abstract
Researchers seeking to establish causal relationships frequently control for variables on the purported causal pathway, checking whether the original treatment effect then disappears. Unfortunately, this common approach may lead to biased estimates. In this article, we show that the bias can be avoided by focusing on a quantity of interest called the controlled direct effect. Under certain conditions, the controlled direct effect enables researchers to rule out competing explanations—an important objective for political scientists. To estimate the controlled direct effect without bias, we describe an easy-to-implement estimation strategy from the biostatistics literature. We extend this approach by deriving a…
Citation impact
- FWCI
- 33.34
- Percentile
- 100%
- References
- 45
Authors
3Topics & keywords
- Fractionalization
- Causal inference
- Variance (accounting)
- Econometrics
- Biostatistics
- Estimator
- Politics
- Estimation
- Gender equality