Matching Methods for Causal Inference: A Review and a Look Forward
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Abstract
When estimating causal effects using observational data, it is desirable to replicate a randomized experiment as closely as possible by obtaining treated and control groups with similar covariate distributions. This goal can often be achieved by choosing well-matched samples of the original treated and control groups, thereby reducing bias due to the covariates. Since the 1970's, work on matching methods has examined how to best choose treated and control subjects for comparison. Matching methods are gaining popularity in fields such as economics, epidemiology, medicine, and political science. However, until now the literature and related advice has been scattered across disciplines. Researchers who are…
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Topics
Keywords
- Causal inference
- Covariate
- Matching (statistics)
- Observational study
- Replicate
- Randomized experiment
- Computer science
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