Publication | Open Access
The approximation of long‐memory processes by an ARMA model
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Citations
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References
2001
Year
Forecasting MethodologyEngineeringArma ModelMemory Model (Programming)Time Series EconometricsSocial SciencesFinancial Time Series AnalysisStochastic ProcessesMemoryLong‐memory Time SeriesFractional StochasticsStatisticsCognitive ScienceMemory SystemComputer ScienceForecasting IssueForecastingSignal ProcessingMemory ReliabilityFast MaNile River Series
Abstract A mean square error criterion is proposed in this paper to provide a systematic approach to approximate a long‐memory time series by a short‐memory ARMA(1, 1) process. Analytic expressions are derived to assess the effect of such an approximation. These results are established not only for the pure fractional noise case, but also for a general autoregressive fractional moving average long‐memory time series. Performances of the ARMA(1,1) approximation as compared to using an ARFIMA model are illustrated by both computations and an application to the Nile river series. Results derived in this paper shed light on the forecasting issue of a long‐memory process. Copyright © 2001 John Wiley & Sons, Ltd.
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