Causal Inference
Adjustment refers to the process of modifying or controlling for confounding variables in order to isolate the effect of a treatment or exposure on an outcome. This is essential in causal inference as it helps to clarify the true relationship between variables by accounting for other factors that may influence the observed outcome. It often involves statistical techniques that use data representations, like directed acyclic graphs (DAGs), to visually illustrate and identify pathways of influence.
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