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Article: An autocovariance-based learning framework for high-dimensional functional time series

TitleAn autocovariance-based learning framework for high-dimensional functional time series
Authors
KeywordsBlock regularized minimum distance estimation
Dimension reduction
Functional time series
High-dimensional data
Non-asymptotics
Sparsity
Issue Date2023
Citation
Journal of Econometrics, 2023 How to Cite?
AbstractMany scientific and economic applications involve the statistical learning of high-dimensional functional time series, where the number of functional variables is comparable to, or even greater than, the number of serially dependent functional observations. In this paper, we model observed functional time series, which are subject to errors in the sense that each functional datum arises as the sum of two uncorrelated components, one dynamic and one white noise. Motivated from the fact that the autocovariance function of observed functional time series automatically filters out the noise term, we propose a three-step framework by first performing autocovariance-based dimension reduction, then formulating a novel autocovariance-based block regularized minimum distance estimation to produce block sparse estimates, and based on which obtaining the final functional sparse estimates. We investigate theoretical properties of the proposed estimators, and illustrate the proposed estimation procedure with the corresponding convergence analysis via three sparse high-dimensional functional time series models. We demonstrate via both simulated and real datasets that our proposed estimators significantly outperform their competitors.
Persistent Identifierhttp://hdl.handle.net/10722/336365
ISSN
2023 Impact Factor: 9.9
2023 SCImago Journal Rankings: 9.161
ISI Accession Number ID

 

DC FieldValueLanguage
dc.contributor.authorChang, Jinyuan-
dc.contributor.authorChen, Cheng-
dc.contributor.authorQiao, Xinghao-
dc.contributor.authorYao, Qiwei-
dc.date.accessioned2024-01-15T08:26:12Z-
dc.date.available2024-01-15T08:26:12Z-
dc.date.issued2023-
dc.identifier.citationJournal of Econometrics, 2023-
dc.identifier.issn0304-4076-
dc.identifier.urihttp://hdl.handle.net/10722/336365-
dc.description.abstractMany scientific and economic applications involve the statistical learning of high-dimensional functional time series, where the number of functional variables is comparable to, or even greater than, the number of serially dependent functional observations. In this paper, we model observed functional time series, which are subject to errors in the sense that each functional datum arises as the sum of two uncorrelated components, one dynamic and one white noise. Motivated from the fact that the autocovariance function of observed functional time series automatically filters out the noise term, we propose a three-step framework by first performing autocovariance-based dimension reduction, then formulating a novel autocovariance-based block regularized minimum distance estimation to produce block sparse estimates, and based on which obtaining the final functional sparse estimates. We investigate theoretical properties of the proposed estimators, and illustrate the proposed estimation procedure with the corresponding convergence analysis via three sparse high-dimensional functional time series models. We demonstrate via both simulated and real datasets that our proposed estimators significantly outperform their competitors.-
dc.languageeng-
dc.relation.ispartofJournal of Econometrics-
dc.subjectBlock regularized minimum distance estimation-
dc.subjectDimension reduction-
dc.subjectFunctional time series-
dc.subjectHigh-dimensional data-
dc.subjectNon-asymptotics-
dc.subjectSparsity-
dc.titleAn autocovariance-based learning framework for high-dimensional functional time series-
dc.typeArticle-
dc.description.naturelink_to_subscribed_fulltext-
dc.identifier.doi10.1016/j.jeconom.2023.01.007-
dc.identifier.scopuseid_2-s2.0-85147593563-
dc.identifier.eissn1872-6895-
dc.identifier.isiWOS:001202447400001-

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