4.1 Article

THE ROLE OF INITIAL VALUES IN CONDITIONAL SUM-OF-SQUARES ESTIMATION OF NONSTATIONARY FRACTIONAL TIME SERIES MODELS

Journal

ECONOMETRIC THEORY
Volume 32, Issue 5, Pages 1095-1139

Publisher

CAMBRIDGE UNIV PRESS
DOI: 10.1017/S0266466615000110

Keywords

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Funding

  1. Center for Research in Econometric Analysis of Time Series - Danish National Research Foundation [CREATES - DNRF78]
  2. Canada Research Chairs program
  3. Social Sciences and Humanities Research Council of Canada (SSHRC)

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In this paper, we analyze the influence of observed and unobserved initial values on the bias of the conditional maximum likelihood or conditional sum-of-squares (CSS, or least squares) estimator of the fractional parameter, d, in a nonstationary fractional time series model. The CSS estimator is popular in empirical work due, at least in part, to its simplicity and its feasibility, even in very complicated nonstationary models. We consider a process, X-t, for which data exist from some point in time, which we call - N-0 + 1, but we only start observing it at a later time, t = 1. The parameter (d, mu, sigma(2)) is estimated by CSS based on the model Delta(d)(0) (X-t - mu) =epsilon(t), t = N + 1,..., N + T, conditional on X-1,..., X-N. We derive an expression for the second-order bias of (d) over cap as a function of the initial values, Xt, t = -N-0 + 1,..., N, and we investigate the effect on the bias of setting aside the first N observations as initial values. We compare (d) over cap with an estimator, (d) over cap (c), derived similarly but by choosing mu = C. We find, both theoretically and using a data set on voting behavior, that in many cases, the estimation of the parameter mu picks up the effect of the initial values even for the choice N = 0. If N-0 = 0, we show that the second-order bias can be completely eliminated by a simple bias correction. If, on the other hand, N-0 > 0, it can only be partly eliminated because the second-order bias term due to the initial values can only be diminished by increasing N.

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