Causal Inference
The backdoor criterion is a rule used in causal inference to determine whether a set of variables can be used to block all backdoor paths between an exposure and an outcome. By identifying and controlling for these confounding variables, it helps in establishing a causal relationship from observational data. This concept is fundamental in understanding how to properly adjust for confounding factors when analyzing causal effects, linking it with directed acyclic graphs (DAGs) and do-calculus.
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