metaestimers
Metaestimers, or meta-estimators, are estimators whose objective is to estimate properties of other estimators rather than directly estimating a population parameter. Formally, a metaestimator targets quantities such as the bias, variance, mean squared error, or the sampling distribution of a set of candidate estimators. The concept emphasizes evaluating and comparing estimation procedures themselves, rather than the underlying parameter.
Construction of metaestimers typically relies on resampling, simulation, or analytical approximations. Bootstrap and subsampling can provide
Applications of metaestimation include model selection, estimator comparison, and the construction of improved estimators through weighting
Limitations and notes: The accuracy of metaestimates depends on the validity of underlying assumptions (such as