Likelihood inference for a fractionally cointegrated vector autoregressive model

Søren Johansen, Morten Ørregård Nielsen

128 Citations (Scopus)

Abstract

We consider model based inference in a fractionally cointegrated (or cofractional) vector autoregressive model, based on the Gaussian likelihood conditional on initial values. We give conditions on the parameters such that the process X t is fractional of order d and cofractional of order d-b; that is, there exist vectors β for which β X t is fractional of order d-b and no other fractionality order is possible. For b=1, the model nests the I(d-1) vector autoregressive model. We define the statistical model by 0 < bd, but conduct inference when the true values satisfy 0d 0-b 0<1/2 and b 0≠1/2, for which β 0 X t is (asymptotically) a stationary process. Our main technical contribution is the proof of consistency of the maximum likelihood estimators. To this end, we prove weak convergence of the conditional likelihood as a continuous stochastic process in the parameters when errors are independent and identically distributed with suitable moment conditions and initial values are bounded. Because the limit is deterministic, this implies uniform convergence in probability of the conditional likelihood function. If the true value b 0>1/2, we prove that the limit distribution of is mixed Gaussian, while for the remaining parameters it is Gaussian. The limit distribution of the likelihood ratio test for cointegration rank is a functional of fractional Brownian motion of type II. If b 0<1/2, all limit distributions are Gaussian or chi-squared. We derive similar results for the model with d=b, allowing for a constant term.

Original languageEnglish
JournalEconometrica
Volume80
Issue number6
Pages (from-to)2667-2732
Number of pages66
ISSN0012-9682
DOIs
Publication statusPublished - Nov 2012

Keywords

  • Faculty of Social Sciences

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