Panel vector autoregression under cross-sectional dependence
This paper studies estimation in panel vector autoregression (VAR) under cross-sectional dependence. The time series are allowed to be an unknown mixture of stationary and unit root processes with possible cointegrating relations. The cross-sectional dependence is modeled with a factor structure. We extend the factor analysis in Bai and Ng (2002, Econometrica 70, 91--221) to vector processes. The fully modified (FM) estimator in Phillips (1995) is used for estimation in panel VAR and we also propose a factor augmented FM estimator. Our simulation results show this factor augmented FM estimator performs well when sample size is large. Copyright © 2008 The Author. Journal compilation © Royal Economic Society 2008
Year of publication: |
2008
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Authors: | Huang, Xiao |
Published in: |
Econometrics Journal. - Royal Economic Society - RES. - Vol. 11.2008, 2, p. 219-243
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Publisher: |
Royal Economic Society - RES |
Saved in:
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