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Quantile spectral analysis of long-memory processes

Authors
Lim, YaejiOh, Hee-Seok
Issue Date
Mar-2022
Publisher
PHYSICA-VERLAG GMBH & CO
Keywords
Laplace periodogram; Log periodogram regression; Long-memory process; Quantile periodogram
Citation
EMPIRICAL ECONOMICS, v.62, no.3, pp 1245 - 1266
Pages
22
Journal Title
EMPIRICAL ECONOMICS
Volume
62
Number
3
Start Page
1245
End Page
1266
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/51397
DOI
10.1007/s00181-021-02045-z
ISSN
0377-7332
1435-8921
Abstract
This study examines the problem of robust spectral analysis of long-memory processes. We investigate the possibility of using Laplace and quantile periodograms for a non-Gaussian distribution structure. The Laplace periodogram, derived by the least absolute deviations in the harmonic regression procedure, demonstrates its superiority in handling heavy-tailed noise and nonlinear distortion. In this study, we discuss an asymptotic distribution of the Laplace periodogram for long-memory processes. We also derive an asymptotic distribution of the quantile periodogram. Through numerical experiments, we demonstrate the robustness of the Laplace periodogram and the usefulness of the quantile periodogram in detecting the hidden frequency for the spectral analysis of the long-memory process under non-Gaussian distribution. Moreover, as an application of robust periodograms under the long-memory process, we discuss the long-memory parameter estimation based on a log periodogram regression approach.
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Lim, Yae Ji
대학원 (통계데이터사이언스학과)
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