Chapter 4
Statistical Conclusion Validity: Measurement in Economic Experiments
Chapter 4 — Statistical Conclusion Validity: Measurement in Economic Experiments Recovering a causal effect is only half the battle—measuring it precisely and drawing valid inferences is the other. This chapter covers the superpopulation and finite-population frameworks for estimating average treatment effects, single and multiple hypothesis testing, and the family-wise error rate. It introduces the difference-in-means and difference-in-differences estimators, Fisher Randomization Inference, and three corrections for multiple testing: Bonferroni, Holm, and the List, Shaikh, and Xu approach.
Key Ideas
- Causal inference is challenging because the same unit cannot be observed in more than one state of the world simultaneously.
- Experimentation is a vital tool used to solve the causal inference problem, allowing us to lend insights into two Experimental Problems.
- Experimental Problem 1 (EP1) pertains to measuring the causal impact of treatments and determining relevant mediators and moderators in an ethically responsible manner.
- Experimental Problem 2 (EP2) relates to whether the causal impacts of treatments implemented in one environment transfer to other environments, be them spatially, temporally, or scale differentiated.