Author:
Phillips Peter C.B.,Magdalinos Tassos
Abstract
A limit theory is developed for multivariate regression in an explosive cointegrated system. The asymptotic behavior of the least squares estimator of the cointegrating coefficients is found to depend upon the precise relationship between the explosive regressors. When the eigenvalues of the autoregressive matrix Θ are distinct, the centered least squares estimator has an exponential Θn rate of convergence and a mixed normal limit distribution. No central limit theory is applicable here, and Gaussian innovations are assumed. On the other hand, when some regressors exhibit common explosive behavior, a different mixed normal limiting distribution is derived with rate of convergence reduced to
$\sqrt{n}$
.
In the latter case, mixed normality applies without any distributional assumptions on the innovation errors by virtue of a Lindeberg type central limit theorem. Conventional statistical inference procedures are valid in this case, the stationary convergence rate dominating the behavior of the least squares estimator.
Publisher
Cambridge University Press (CUP)
Subject
Economics and Econometrics,Social Sciences (miscellaneous)
Reference9 articles.
1. On Asymptotic Distributions of Estimates of Parameters of Stochastic Difference Equations
2. Statistical Inference in Regressions with Integrated Processes: Part 2
3. Matrix Algebra
4. Magdalinos T. ’ Phillips P.C.B. (2006) Limit Theory for Cointegrated Systems with Moderately Integrated and Moderately Explosive Regressors. Working paper, Yale University.
Cited by
24 articles.
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