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Accumulated prediction errors, information criteria and optimal forecasting for autoregressive time series

17 August 2007
C. Ing
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Abstract

The predictive capability of a modification of Rissanen's accumulated prediction error (APE) criterion, APEδn_{\delta_n}δn​​, is investigated in infinite-order autoregressive (AR(∞\infty∞)) models. Instead of accumulating squares of sequential prediction errors from the beginning, APEδn_{\delta_n}δn​​ is obtained by summing these squared errors from stage nδnn\delta_nnδn​, where nnn is the sample size and 1/n≤δn≤1−(1/n)1/n\leq \delta_n\leq 1-(1/n)1/n≤δn​≤1−(1/n) may depend on nnn. Under certain regularity conditions, an asymptotic expression is derived for the mean-squared prediction error (MSPE) of an AR predictor with order determined by APEδn_{\delta_n}δn​​. This expression shows that the prediction performance of APEδn_{\delta_n}δn​​ can vary dramatically depending on the choice of δn\delta_nδn​. Another interesting finding is that when δn\delta_nδn​ approaches 1 at a certain rate, APEδn_{\delta_n}δn​​ can achieve asymptotic efficiency in most practical situations. An asymptotic equivalence between APEδn_{\delta_n}δn​​ and an information criterion with a suitable penalty term is also established from the MSPE point of view. This offers new perspectives for understanding the information and prediction-based model selection criteria. Finally, we provide the first asymptotic efficiency result for the case when the underlying AR(∞\infty∞) model is allowed to degenerate to a finite autoregression.

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