2022
DOI: 10.1088/1361-6420/ac48ca
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Estimating the memory parameter for potentially non-linear and non-Gaussian time series with wavelets

Abstract: The asymptotic theory for the memory-parameter estimator constructed from the log-regression with wavelets is incomplete for 1/$f$ processes that are not necessarily Gaussian or linear. Having a complete version of this theory is necessary because of the importance of non-Gaussian and non-linear long-memory models in describing financial time series. To bridge this gap, we prove that, under some mild assumptions, a newly designed memory estimator, named LRMW in this paper, is asymptotically consistent. The per… Show more

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