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Main Authors: Kechagias, Stefanos, Pipiras, Vladas, Zoubouloglou, Pavlos
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.07170
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author Kechagias, Stefanos
Pipiras, Vladas
Zoubouloglou, Pavlos
author_facet Kechagias, Stefanos
Pipiras, Vladas
Zoubouloglou, Pavlos
contents A new model for general cyclical long memory is introduced, by means of random modulation of certain bivariate long memory time series. This construction essentially decouples the two key features of cyclical long memory: quasi-periodicity and long-term persistence. It further allows for a general cyclical phase in cyclical long memory time series. Several choices for suitable bivariate long memory series are discussed, including a parametric fractionally integrated vector ARMA model. The parametric models introduced in this work have explicit autocovariance functions that can be used readily in simulation, estimation, and other tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2403_07170
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Cyclical Long Memory: Decoupling, Modulation, and Modeling
Kechagias, Stefanos
Pipiras, Vladas
Zoubouloglou, Pavlos
Statistics Theory
Probability
A new model for general cyclical long memory is introduced, by means of random modulation of certain bivariate long memory time series. This construction essentially decouples the two key features of cyclical long memory: quasi-periodicity and long-term persistence. It further allows for a general cyclical phase in cyclical long memory time series. Several choices for suitable bivariate long memory series are discussed, including a parametric fractionally integrated vector ARMA model. The parametric models introduced in this work have explicit autocovariance functions that can be used readily in simulation, estimation, and other tasks.
title Cyclical Long Memory: Decoupling, Modulation, and Modeling
topic Statistics Theory
Probability
url https://arxiv.org/abs/2403.07170