estimatorats
Estimatorats are a class of statistical estimators that synthesize multiple base estimators to improve the accuracy of estimating a parameter or a function of a distribution from observed data. The central idea is to reduce overall estimation error by leveraging the complementary strengths of diverse models. A typical estimatorat forms a weighted combination of base estimators, for example theta_hat = sum_j w_j * theta_hat_j, with weights summing to one. The weights are chosen to minimize a risk criterion such as estimated mean squared error, often using cross‑validation or bootstrap methods. Estimatorats can be linear or nonlinear in their combination, and may incorporate meta-learners that learn how to blend the base estimates.
Origins and usage: The concept parallels ensemble and model-averaging approaches in statistics and machine learning. Estimatorats
Properties: When base estimators are diverse and carry different biases or variances, estimatorats can achieve lower
Limitations: The performance of an estimatorat depends on the choice of base estimators and the method for
See also: ensemble methods, model averaging, stacking, bagging, boosting.