Title of article :
Modified conditional AIC in linear mixed models
Author/Authors :
Kawakubo، نويسنده , , Yuki and Kubokawa، نويسنده , , Tatsuya، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2014
Abstract :
In linear mixed models, the conditional Akaike Information Criterion (cAIC) is a procedure for variable selection in light of the prediction of specific clusters or random effects. This is useful in problems involving prediction of random effects such as small area estimation, and much attention has been received since suggested by Vaida and Blanchard (2005). A weak point of cAIC is that it is derived as an unbiased estimator of conditional Akaike Information (cAI) in the overspecified case, namely in the case that candidate models include the true model. This results in larger biases in the underspecified case that the true model is not included in candidate models. In this paper, we derive the modified cAIC (McAIC) to cover both the underspecified and overspecified cases, and investigate properties of McAIC. It is numerically shown that McAIC has less biases and less prediction errors than cAIC.
Keywords :
Akaike information criterion , Linear mixed model , Model Averaging , Conditional AIC , variable selection , Small Area Estimation
Journal title :
Journal of Multivariate Analysis
Journal title :
Journal of Multivariate Analysis