Akaike Information Criterion for Selecting Variables in the Nested Error Regression Model |
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Authors: | Tatsuya Kubokawa Muni S. Srivastava |
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Affiliation: | 1. Faculty of Economics , University of Tokyo , Tokyo , Japan tatsuya@e.u-tokyo.ac.jp;3. Department of Statistics , University of Toronto , Toronto , Ontario , Canada |
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Abstract: | The Akaike Information Criterion (AIC) is developed for selecting the variables of the nested error regression model where an unobservable random effect is present. Using the idea of decomposing the likelihood into two parts of “within” and “between” analysis of variance, we derive the AIC when the number of groups is large and the ratio of the variances of the random effects and the random errors is an unknown parameter. The proposed AIC is compared, using simulation, with Mallows' C p , Akaike's AIC, and Sugiura's exact AIC. Based on the rates of selecting the true model, it is shown that the proposed AIC performs better. |
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Keywords: | Akaike information criterion Analysis of variance Linear mixed model Nested error regression model Random effect Selection of variables Small area estimation |
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