Matching Methods for Causal Inference
Gary King. 2012.
"Matching Methods for Causal Inference."
Abstract
This presentation shows how to use matching in causal inference to ameliorate model dependence – where small, indefensible changes in model specification have large impacts on our conclusions. We introduce matching methods that are simpler, more powerful, and easier to understand. We also show that the most commonly used existing method, propensity score matching, should rarely be used. Easy-to-use software is available to implement all methods discussed.
See Also
- [Presentation] Matching Methods for Observational and Experimental Causal Inference (Facultad Latinoamericana de Ciencias Sociales) (2023)
- [Presentation] Simplifying Matching Methods for Causal Inference (University of Wisconsin at Madison) (2022)
- [Presentation] Simplifying Matching Methods for Causal Inference (Hebrew University of Jerusalem) (2020)
- [Paper] A Theory of Statistical Inference for Matching Methods in Causal Research (2019)
- [Presentation] Simplifying Matching Methods for Causal Inference (2019)
- [Presentation] Simplifying Matching Methods for Causal Inference (University of Minho) (2019)
- [Presentation] Matching Methods for Causal Inference and 21 Other Topics (2017)
- [Paper] The Balance-Sample Size Frontier in Matching Methods for Causal Inference (2017)