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[Case Study] Introduction to [Causal Identification and Estimation Approaches] #8

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@PhilippBach

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@PhilippBach

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

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.

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