Linear Trend with Fractionally Integrated Errors

We consider the estimation of linear trend for a time series in the presence of additive long‐memory noise with memory parameter d∈[0, 1.5). Although no parametric model is assumed for the noise, our assumptions include as special cases the random walk with drift as well as linear trend with station...

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Veröffentlicht in:Journal of time series analysis 1998-07, Vol.19 (4), p.379-397
Hauptverfasser: Deo, Rohit S., Hurvich, Clifford M.
Format: Artikel
Sprache:eng
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Zusammenfassung:We consider the estimation of linear trend for a time series in the presence of additive long‐memory noise with memory parameter d∈[0, 1.5). Although no parametric model is assumed for the noise, our assumptions include as special cases the random walk with drift as well as linear trend with stationary invertible autoregressive moving‐average errors. Moreover, our assumptions include a wide variety of trend‐stationary and difference‐stationary situations. We consider three different trend estimators: the ordinary least squares estimator based on the original series, the sample mean of the first differences and a class of weighted (tapered) means of the first differences. We present expressions for the asymptotic variances of these estimators in the form of one‐dimensional integrals. We also establish the asymptotic normality of the tapered means for d∈[0, 1.5) −{0.5} and of the ordinary least squares estimator for d∈ (0.5, 1.5). We point out connections with existing theory and present applications of the methodology.
ISSN:0143-9782
1467-9892
DOI:10.1111/1467-9892.00099