Applied Impact Evaluation
Doubly robust estimation is a statistical method used to improve the accuracy of causal inference by combining two approaches: propensity score modeling and outcome regression modeling. This technique ensures that if either the propensity score model or the outcome model is correctly specified, the resulting estimates of treatment effects will still be unbiased. This makes it a powerful tool for addressing confounding in observational studies, enhancing reliability when assessing the impact of interventions.
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