Monte Carlo Singular Spectrum Analysis (SSA) Revisited: Detecting Oscillator Clusters in Multivariate Datasets

Singular spectrum analysis (SSA) along with its multivariate extension (M-SSA) provides an efficient way to identify weak oscillatory behavior in high-dimensional data. To prevent the misinterpretation of stochastic fluctuations in short time series as oscillations, Monte Carlo (MC)–type hypothesis...

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Published in:Journal of Climate
Main Authors: Groth, Andreas, Ghil, Michael
Format: Article in Journal/Newspaper
Language:English
Published: eScholarship, University of California 2015
Subjects:
Online Access:http://www.escholarship.org/uc/item/11r3w74z
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spelling ftcdlib:qt11r3w74z 2023-05-15T17:33:19+02:00 Monte Carlo Singular Spectrum Analysis (SSA) Revisited: Detecting Oscillator Clusters in Multivariate Datasets Groth, Andreas Ghil, Michael 7873 - 7893 2015-10-01 application/pdf http://www.escholarship.org/uc/item/11r3w74z english eng eScholarship, University of California qt11r3w74z http://www.escholarship.org/uc/item/11r3w74z Groth, Andreas; & Ghil, Michael. (2015). Monte Carlo Singular Spectrum Analysis (SSA) Revisited: Detecting Oscillator Clusters in Multivariate Datasets. Journal of Climate, 28(19), 7873 - 7893. doi:10.1175/JCLI-D-15-0100.1. UCLA: Retrieved from: http://www.escholarship.org/uc/item/11r3w74z Physical Sciences and Mathematics article 2015 ftcdlib https://doi.org/10.1175/JCLI-D-15-0100.1 2017-04-07T22:49:51Z Singular spectrum analysis (SSA) along with its multivariate extension (M-SSA) provides an efficient way to identify weak oscillatory behavior in high-dimensional data. To prevent the misinterpretation of stochastic fluctuations in short time series as oscillations, Monte Carlo (MC)–type hypothesis tests provide objective criteria for the statistical significance of the oscillatory behavior. Procrustes target rotation is introduced here as a key method for refining previously available MC tests. The proposed modification helps reduce the risk of type-I errors, and it is shown to improve the test’s discriminating power. The reliability of the proposed methodology is examined in an idealized setting for a cluster of harmonic oscillators immersed in red noise. Furthermore, the common method of data compression into a few leading principal components, prior to M-SSA, is reexamined, and its possibly negative effects are discussed. Finally, the generalized Procrustes test is applied to the analysis of interannual variability in the North Atlantic’s sea surface temperature and sea level pressure fields. The results of this analysis provide further evidence for shared mechanisms of variability between the Gulf Stream and the North Atlantic Oscillation in the interannual frequency band. Article in Journal/Newspaper North Atlantic North Atlantic oscillation University of California: eScholarship Journal of Climate 28 19 7873 7893
institution Open Polar
collection University of California: eScholarship
op_collection_id ftcdlib
language English
topic Physical Sciences and Mathematics
spellingShingle Physical Sciences and Mathematics
Groth, Andreas
Ghil, Michael
Monte Carlo Singular Spectrum Analysis (SSA) Revisited: Detecting Oscillator Clusters in Multivariate Datasets
topic_facet Physical Sciences and Mathematics
description Singular spectrum analysis (SSA) along with its multivariate extension (M-SSA) provides an efficient way to identify weak oscillatory behavior in high-dimensional data. To prevent the misinterpretation of stochastic fluctuations in short time series as oscillations, Monte Carlo (MC)–type hypothesis tests provide objective criteria for the statistical significance of the oscillatory behavior. Procrustes target rotation is introduced here as a key method for refining previously available MC tests. The proposed modification helps reduce the risk of type-I errors, and it is shown to improve the test’s discriminating power. The reliability of the proposed methodology is examined in an idealized setting for a cluster of harmonic oscillators immersed in red noise. Furthermore, the common method of data compression into a few leading principal components, prior to M-SSA, is reexamined, and its possibly negative effects are discussed. Finally, the generalized Procrustes test is applied to the analysis of interannual variability in the North Atlantic’s sea surface temperature and sea level pressure fields. The results of this analysis provide further evidence for shared mechanisms of variability between the Gulf Stream and the North Atlantic Oscillation in the interannual frequency band.
format Article in Journal/Newspaper
author Groth, Andreas
Ghil, Michael
author_facet Groth, Andreas
Ghil, Michael
author_sort Groth, Andreas
title Monte Carlo Singular Spectrum Analysis (SSA) Revisited: Detecting Oscillator Clusters in Multivariate Datasets
title_short Monte Carlo Singular Spectrum Analysis (SSA) Revisited: Detecting Oscillator Clusters in Multivariate Datasets
title_full Monte Carlo Singular Spectrum Analysis (SSA) Revisited: Detecting Oscillator Clusters in Multivariate Datasets
title_fullStr Monte Carlo Singular Spectrum Analysis (SSA) Revisited: Detecting Oscillator Clusters in Multivariate Datasets
title_full_unstemmed Monte Carlo Singular Spectrum Analysis (SSA) Revisited: Detecting Oscillator Clusters in Multivariate Datasets
title_sort monte carlo singular spectrum analysis (ssa) revisited: detecting oscillator clusters in multivariate datasets
publisher eScholarship, University of California
publishDate 2015
url http://www.escholarship.org/uc/item/11r3w74z
op_coverage 7873 - 7893
genre North Atlantic
North Atlantic oscillation
genre_facet North Atlantic
North Atlantic oscillation
op_source Groth, Andreas; & Ghil, Michael. (2015). Monte Carlo Singular Spectrum Analysis (SSA) Revisited: Detecting Oscillator Clusters in Multivariate Datasets. Journal of Climate, 28(19), 7873 - 7893. doi:10.1175/JCLI-D-15-0100.1. UCLA: Retrieved from: http://www.escholarship.org/uc/item/11r3w74z
op_relation qt11r3w74z
http://www.escholarship.org/uc/item/11r3w74z
op_doi https://doi.org/10.1175/JCLI-D-15-0100.1
container_title Journal of Climate
container_volume 28
container_issue 19
container_start_page 7873
op_container_end_page 7893
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