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Description
1. Description of the Case Study
Illustration and demonstration of causal identification and estimation approaches
2. Idea for the data product
A report, blog post or app illustrating the main idea and implementation (if available) of quasi-experimental approaches, for example
- regression discontinuity
- instrumental variable estimation
- estimation of local average treatment effects under imperfect compliance
- synthetic control
- matching and propensity score matching
- difference-in-differences
- heterogeneous treatment effects (conditional/group average treatment effects)
3. Available resources and references
There are plenty of resources available, examples include
- Chapter 6 of Cunningham (2020) on regression disontinuity
- Chapter 7 of Cunningham (2020) on instrumental variable estimation
- Chapter 7.6 of Cunningham (2020) on heterogenous treatment effects and IV (LATE)
- Chapter 5 of Cunningham (2020) on matching etc.
- This blogpost by M. Courthoud on synthetic control methods
4. Comments
The difficulty here is to first become familiar with the identification and estimation approach and develop a nice illustrating example. It is probably also necessary to dive into specific R packages that implement these appraoches.
This issue can be customized to the respective estimation approach - open a new, more specific issue then.