Journal article
Model selection and prediction: Normal regression
TP Speed, B Yu
Annals of the Institute of Statistical Mathematics | SPRINGER HEIDELBERG | Published : 1993
DOI: 10.1007/BF00773667
Abstract
This paper discusses the topic of model selection for finite-dimensional normal regression models. We compare model selection criteria according to prediction errors based upon prediction with refitting, and prediction without refitting. We provide a new lower bound for prediction without refitting, while a lower bound for prediction with refitting was given by Rissanen. Moreover, we specify a set of sufficient conditions for a model selection criterion to achieve these bounds. Then the achievability of the two bounds by the following selection rules are addressed: Rissanen's accumulated prediction error criterion (APE), his stochastic complexity criterion, AIC, BIC and the FPE criteria. In ..
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