An Improved Divergence Information Criterion for the Determination of the Order of an AR Process
Résumé
In this paper we propose a modification of the Divergence Information Criterion (DIC) for the determination of the order of an autoregressive process and show that it is an asymptotically unbiased estimator of the expected overall discrepancy. Further, we use Monte Carlo methods and various Data Generating Processes for small, medium and large sample sizes in order to explore the capabilities of the new criterion in selecting the optimal order in autoregressive processes and in general in a time series context. The new criterion shows remarkably good results by choosing the correct model more frequently than traditional Information Criteria.
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