A criterion for vector autoregressive model selection based on Kullback's symmetric divergence

The Kullback information criterion, KIC, and its univariate bias-corrected version, KIC/sub c/, are two recently developed criteria for model selection. A small sample model selection criterion for vector autoregressive models is developed. The proposed criterion is named KIC/sub vc/, where the notation "vc" stands for vector correction, and it can be considered as an extension of KIC for vector autoregressive models. KIC/sub vc/ is an unbiased estimator of a variant of the Kullback symmetric divergence, assuming that the true model is correctly specified or overfitted. Simulation results shows that the proposed criterion estimates the model order more accurately than any other asymptotically efficient method when applied to vector autoregressive model selection in small samples.

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