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Unit root and cointegrating limit theory when the initialization is in the infinite past

Unit root and cointegrating limit theory when the initialization is in the infinite past
Unit root and cointegrating limit theory when the initialization is in the infinite past
It is well known that unit root limit distributions are sensitive to initial conditions in the distant past. If the distant past initialization is extended to the infinite past, the initial condition dominates the limit theory, producing a faster rate of convergence, a limiting Cauchy distribution for the least squares coefficient, and a limit normal distribution for the t-ratio. This amounts to the tail of the unit root process wagging the dog of the unit root limit theory. These simple results apply in the case of a univariate autoregression with no intercept. The limit theory for vector unit root regression and cointegrating regression is affected but is no longer dominated by infinite past initializations. The latter contribute to the limiting distribution of the least squares estimator and produce a singularity in the limit theory, but do not change the principal rate of convergence. Usual cointegrating regression theory and inference continue to hold in spite of the degeneracy in the limit theory and are therefore robust to initial conditions that extend to the infinite past
1682-1715
Phillips, Peter C.B
f67573a4-fc30-484c-ad74-4bbc797d7243
Magdalinos, Tassos
ded74727-1ed4-417d-842f-00ea86a3bc31
Phillips, Peter C.B
f67573a4-fc30-484c-ad74-4bbc797d7243
Magdalinos, Tassos
ded74727-1ed4-417d-842f-00ea86a3bc31

Phillips, Peter C.B and Magdalinos, Tassos (2009) Unit root and cointegrating limit theory when the initialization is in the infinite past. [in special issue: Newbold Conference] Econometric Theory, 25 (6), 1682-1715. (doi:10.1017/S0266466609990296).

Record type: Article

Abstract

It is well known that unit root limit distributions are sensitive to initial conditions in the distant past. If the distant past initialization is extended to the infinite past, the initial condition dominates the limit theory, producing a faster rate of convergence, a limiting Cauchy distribution for the least squares coefficient, and a limit normal distribution for the t-ratio. This amounts to the tail of the unit root process wagging the dog of the unit root limit theory. These simple results apply in the case of a univariate autoregression with no intercept. The limit theory for vector unit root regression and cointegrating regression is affected but is no longer dominated by infinite past initializations. The latter contribute to the limiting distribution of the least squares estimator and produce a singularity in the limit theory, but do not change the principal rate of convergence. Usual cointegrating regression theory and inference continue to hold in spite of the degeneracy in the limit theory and are therefore robust to initial conditions that extend to the infinite past

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Published date: 2009
Organisations: Economics

Identifiers

Local EPrints ID: 187611
URI: http://eprints.soton.ac.uk/id/eprint/187611
PURE UUID: ce6b8e83-6185-4639-85cd-c3a823ca66b9
ORCID for Peter C.B Phillips: ORCID iD orcid.org/0000-0003-2341-0451

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Date deposited: 18 May 2011 07:32
Last modified: 14 Mar 2024 03:26

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