2010
DOI: 10.1155/2010/397454
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On the Predictability of Long‐Range Dependent Series

Abstract: This paper points out that the predictability analysis of conventional time series may in general be invalid for long-range dependent (LRD) series since the conventional mean-square error (MSE) may generally not exist for predicting LRD series. To make the MSE of LRD series prediction exist, we introduce a generalized MSE. With that, the proof of the predictability of LRD series is presented in Hilbert space.

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Cited by 36 publications
(9 citation statements)
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“…In the latter case, special techniques have to be considered [7578]. For instance, weighting prediction error may be a technique necessarily to be taken into account, which is suggested in the domain of generalized functions over the Schwartz distributions [79]. …”
Section: Discussionmentioning
confidence: 99%
“…In the latter case, special techniques have to be considered [7578]. For instance, weighting prediction error may be a technique necessarily to be taken into account, which is suggested in the domain of generalized functions over the Schwartz distributions [79]. …”
Section: Discussionmentioning
confidence: 99%
“…Let X " px t : t " 1, 2, 3...q be a stochastic process with the ACF r xx pτq " Erxptqxpt`τqs, then X is called SRD series if r xx pτq is integrable [16,29], that is ş 8 0 r xx pτqdτ ă 8, on the other side, X is LRD if r xx pτq is nonintegrable, that is ş 8 0 r xx pτqdτ " 8. Moreover, the autocorrelation function follows asymptotically:…”
Section: Theory Of Long Range Dependencementioning
confidence: 99%
“…where denotes averaging over the ensemble, and H is the Hurst index. The scaling behavior of the different traces, V H x , is characterized by a particular H which relate the typical change in Δz x , where z x V H x , is the trace of the fBm, and the change in the spatial coordinate Δx by the simple scaling law 36,39,40 :…”
Section: Brownian Surfaces and Random Fractalsmentioning
confidence: 99%