The Information Criterion
Article Sidebar
Published
Nov 1, 2014
Main Article Content
Masume Ghahramani
Department of Statistics, Payam Noor University, Iran
Abstract
The Akaike information criterion, AIC, is widely used for model selection. Using the AIC as the estimator of asymptotic unbias for the second term Kullbake-Leibler risk considers the divergence between the true model and offered models. However, it is an inconsistent estimator. A proposed approach the problem is the use of A'IC, a consistently offered information criterion. Model selection of classic and linear models are considered by a Monte Carlo simulation.
Article Details
Issue
Section
Articles