DocumentCode
791810
Title
Vector Autoregressive Model-Order Selection From Finite Samples Using Kullback´s Symmetric Divergence
Author
Seghouane, Abd-Krim
Author_Institution
Canberra Res. Lab., Nat. ICT Australia, Canberra, ACT
Volume
53
Issue
10
fYear
2006
Firstpage
2327
Lastpage
2335
Abstract
In this paper, a new small-sample model selection criterion for vector autoregressive (VAR) models is developed. The proposed criterion is named Kullback information criterion (KICvc), where the notation vc stands for vector correction, and it can be considered as an extension of the KIC, for VAR models. KICvc adjusts KIC to be an unbiased estimator for the variant of the Kullback symmetric divergence, assuming that the true model is correctly specified or overfitted. Furthermore, KICvc provides better VAR model-order choices than KIC in small samples. Simulation results show that the proposed criterion selects the model order more accurately than other asymptotically efficient methods when applied to VAR model selection in small samples. As a result, KICvc serves as an effective tool for selecting a VAR model of appropriate order. A theoretical justification of the proposed criterion is presented
Keywords
autoregressive processes; information theory; reduced order systems; vectors; Kullback Leibler information; Kullback information criterion; Kullback symmetric divergence; finite samples; model order selection; sample model selection criterion; vector autoregressive models; Adaptive control; Adaptive equalizers; Australia Council; Bayesian methods; Communication channels; Direction of arrival estimation; Maximum likelihood estimation; Parameter estimation; Reactive power; Speech synthesis; Autoregressive (AR) models; Kullback information criterion (KIC); Kullback–Leibler information; model selection;
fLanguage
English
Journal_Title
Circuits and Systems I: Regular Papers, IEEE Transactions on
Publisher
ieee
ISSN
1549-8328
Type
jour
DOI
10.1109/TCSI.2006.883158
Filename
1710212
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