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Estimation in a linear regression model under the Kullback–Leibler loss and its application to model selection
Authors:Tatsuya Kubokawa  Hisayuki Tsukuma
Institution:1. Faculty of Economics, University of Tokyo, 7-3-1 Hongo, Bunkyo-ku, Tokyo 113-0033, Japan;2. Faculty of Medicine, Toho University, 5-21-16 Omori-nishi, Ota-ku, Tokyo 143-0012, Japan
Abstract:This paper is concerned with the problem of constructing a good predictive distribution relative to the Kullback–Leibler information in a linear regression model. The problem is equivalent to the simultaneous estimation of regression coefficients and error variance in terms of a complicated risk, which yields a new challenging issue in a decision-theoretic framework. An estimator of the variance is incorporated here into a loss for estimating the regression coefficients. Several estimators of the variance and of the regression coefficients are proposed and shown to improve on usual benchmark estimators both analytically and numerically. Finally, the prediction problem of a distribution is noted to be related to an information criterion for model selection like the Akaike information criterion (AIC). Thus, several AIC variants are obtained based on proposed and improved estimators and are compared numerically with AIC as model selection procedures.
Keywords:Akaike information criterion  Decision theory  Error variance  Estimation  Information criterion  James&ndash  Stein estimator  Kullback&ndash  Leibler information  Linear regression model  Model selection  Regression coefficients  Risk function  Truncated procedure  Uniform domination
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