Likelihood inference for a nonstationary fractional autoregressive model

Søren Johansen, Morten Ørregård Nielsen

74 Citations (Scopus)

Abstract

This paper discusses model-based inference in an autoregressive model for fractional processes which allows the process to be fractional of order d or d-b. Fractional differencing involves infinitely many past values and because we are interested in nonstationary processes we model the data X1,⋯,XT given the initial values X-n,n=0,1,⋯, as is usually done. The initial values are not modeled but assumed to be bounded. This represents a considerable generalization relative to previous work where it is assumed that initial values are zero. For the statistical analysis we assume the conditional Gaussian likelihood and for the probability analysis we also condition on initial values but assume that the errors in the autoregressive model are i.i.d. with suitable moment conditions. We analyze the conditional likelihood and its derivatives as stochastic processes in the parameters, including d and b, and prove that they converge in distribution. We use these results to prove consistency of the maximum likelihood estimator for d,b in a large compact subset of 12<b<d<∞, and to find the asymptotic distribution of the estimators and the likelihood ratio test of the associated fractional unit root hypothesis. The limit distributions contain the fractional Brownian motion of type II.

Original languageEnglish
JournalJournal of Econometrics
Volume158
Issue number1
Pages (from-to)51-66
Number of pages16
ISSN0304-4076
DOIs
Publication statusPublished - Sept 2010

Keywords

  • Faculty of Social Sciences
  • Dickey–Fuller test
  • fractional unit root
  • likelihood inference

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