Publication | Closed Access
Bias of the corrected AIC criterion for underfitted regression and time series models
291
Citations
8
References
1991
Year
EngineeringAic CriterionRegression AnalysisTime Series ModelsAkaike Information CriterionTime Series EconometricsNormal Linear RegressionData ScienceBiostatisticsTrue ModelStatisticsSelection BiasPredictive AnalyticsPredictive ModelingModel ComparisonForecastingPredictabilityBusinessEconometricsStatistical InferenceUnderfitted Regression
The Akaike Information Criterion, AIC (Akaike, 1973), and a bias-corrected version, AICC(Sugiura, 1978; Hurvich & Tsai, 1989) are two methods for selection of regression and autoregressive models. Both criteria may be viewed as estimators of the expected Kullback-Leibler information. The bias of AIC and AICC is studied in the underfitting case, where none of the candidate models includes the true model (Shibata, 1980, 1981; Parzen, 1978). Both normal linear regression and autoregressive candidate models are considered. The bias of AICC is typically smaller, often dramatically smaller, than that of AIC. A simulation study in which the true model is an infinite-order autoregression shows that, even in moderate sample sizes, AICC provides substantially better model selections than AIC.
| Year | Citations | |
|---|---|---|
Page 1
Page 1