Causal Inference
Adjustment methods are statistical techniques used to control for confounding variables in causal inference, allowing researchers to estimate the effect of an exposure or treatment on an outcome more accurately. These methods help to reduce bias by balancing the distribution of confounders across treatment groups, making it easier to draw valid conclusions about causal relationships. In the context of score-based algorithms, adjustment methods play a crucial role in refining estimates and improving the reliability of findings.
congrats on reading the definition of Adjustment Methods. now let's actually learn it.