Shrinkage estimators for prediction out-of-sample: Conditional performance

Autor: Huber, Nina, Leeb, Hannes
Rok vydání: 2012
Předmět:
Zdroj: Communications in Statistics - Theory and Methods, 42:7, 1246-1264, 2013
Druh dokumentu: Working Paper
Popis: We find that, in a linear model, the James-Stein estimator, which dominates the maximum-likelihood estimator in terms of its in-sample prediction error, can perform poorly compared to the maximum-likelihood estimator in out-of-sample prediction. We give a detailed analysis of this phenomenon and discuss its implications. When evaluating the predictive performance of estimators, we treat the regressor matrix in the training data as fixed, i.e., we condition on the design variables. Our findings contrast those obtained by Baranchik (1973, Ann. Stat. 1:312-321) and, more recently, by Dicker (2012, arXiv:1102.2952) in an unconditional performance evaluation.
Databáze: arXiv