Penalized estimation of threshold auto-regressive models with many components and thresholds.

Non-linear time series fused lasso high-dimensional time series threshold estimation

Journal

Electronic journal of statistics
ISSN: 1935-7524
Titre abrégé: Electron J Stat
Pays: United States
ID NLM: 101480209

Informations de publication

Date de publication:
2022
Historique:
medline: 1 1 2022
entrez: 13 4 2023
pubmed: 1 1 2022
Statut: ppublish

Résumé

Thanks to their simplicity and interpretable structure, autoregressive processes are widely used to model time series data. However, many real time series data sets exhibit non-linear patterns, requiring nonlinear modeling. The threshold Auto-Regressive (TAR) process provides a family of non-linear auto-regressive time series models in which the process dynamics are specific step functions of a thresholding variable. While estimation and inference for low-dimensional TAR models have been investigated, high-dimensional TAR models have received less attention. In this article, we develop a new framework for estimating high-dimensional TAR models, and propose two different sparsity-inducing penalties. The first penalty corresponds to a natural extension of classical TAR model to high-dimensional settings, where the same threshold is enforced for all model parameters. Our second penalty develops a more flexible TAR model, where different thresholds are allowed for different auto-regressive coefficients. We show that both penalized estimation strategies can be utilized in a three-step procedure that consistently learns both the thresholds and the corresponding auto-regressive coefficients. However, our theoretical and empirical investigations show that the direct extension of the TAR model is not appropriate for high-dimensional settings and is better suited for moderate dimensions. In contrast, the more flexible extension of the TAR model leads to consistent estimation and superior empirical performance in high dimensions.

Identifiants

pubmed: 37051046
doi: 10.1214/22-EJS1982
pmc: PMC10088520
mid: NIHMS1885625
doi:

Types de publication

Journal Article

Langues

eng

Pagination

1891-1951

Subventions

Organisme : NIGMS NIH HHS
ID : R01 GM114029
Pays : United States
Organisme : NIGMS NIH HHS
ID : R01 GM133848
Pays : United States

Références

PLoS One. 2014 Oct 17;9(10):e109454
pubmed: 25330160
J Am Stat Assoc. 2017;112(520):1697-1707
pubmed: 29618851
J Mach Learn Res. 2015;16(13):417-453
pubmed: 34267606
Electron J Stat. 2016;10(1):1341-1392
pubmed: 28473876
J Stat Softw. 2010;33(1):1-22
pubmed: 20808728

Auteurs

Kunhui Zhang (K)

University of Washington, Department of Statistics, Padelford Hall, W Stevens Way NE, Seattle, WA 98195.

Abolfazl Safikhani (A)

University of Florida, Department of Statistics, 102 Griffin-Floyd Hall, Gainesville, FL 32611.

Alex Tank (A)

University of Washington, Department of Statistics, Padelford Hall, W Stevens Way NE, Seattle, WA 98195.

Ali Shojaie (A)

University of Washington, Department of Statistics, Padelford Hall, W Stevens Way NE, Seattle, WA 98195.
University of Washington, Department of Biostatistics, Health Sciences Building, 1705 NE Pacific Street, Seattle, WA 98195.

Classifications MeSH