metaestimation
Metaestimation refers to the assessment and improvement of estimation procedures themselves, rather than the direct estimation of a parameter. It studies how estimators perform across different data-generating processes, sample sizes, and model specifications, with the goal of choosing more reliable methods and tuning rules.
Definition and scope: It encompasses evaluation of bias, variance, mean squared error, and the coverage and
Methods: The metaestimation workflow combines theoretical analysis of asymptotic properties with empirical studies. Simulation experiments across
Applications and examples: Metaestimation informs method selection for regression, classification, and causal inference, particularly in small
Limitations and challenges: Computational cost, sensitivity to simulation choices, and the risk of overfitting to the