Article ID Journal Published Year Pages File Type
1145659 Journal of Multivariate Analysis 2014 17 Pages PDF
Abstract

The AIC, the multivariate Cp and their modifications have been proposed for multivariate linear regression models under a large-sample framework when the sample size nn is large, but the dimension pp of the response variables is fixed. In this paper, first we propose a high-dimensional AIC (denoted by HAIC) which is an asymptotic unbiased estimator of the risk function defined by the expected log-predictive likelihood or equivalently the Kullback–Leibler information under a high-dimensional framework p/n→c∈[0,1)p/n→c∈[0,1). It is noted that our new criterion provides better approximations to the risk function in a wide range of pp and nn. Recently Yanagihara et al. (2012)  [17] noted that AIC has a consistency property under Ω=O(np) when p/n→c∈[0,1)p/n→c∈[0,1), where Ω is a noncentrality matrix. In this paper we show that several criteria including HAIC and Cp have also a consistency property under Ω=O(n) as well as Ω=O(np) when p/n→c∈[0,1)p/n→c∈[0,1). Our results are checked numerically by conducting a Monte Carlo simulation.

Related Topics
Physical Sciences and Engineering Mathematics Numerical Analysis
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