Multiscale autoregression on adaptively detected timescales

Baranowski, R., Chen, Y.ORCID logo & Fryzlewicz, P.ORCID logo (2024). Multiscale autoregression on adaptively detected timescales. Statistica Sinica,
Copy

We propose a multiscale approach to time series autoregression, in which linear regressors for the process in question include features of its own path that live on multiple timescales. We take these multiscale features to be the recent averages of the process over multiple timescales, whose number or spans are not known to the analyst and are estimated from the data via a change-point detection technique. The resulting construction, termed Adaptive Multiscale AutoRegression (AMAR) enables adaptive regularisation of linear autoregressions of large orders. The AMAR model is designed to offer simplicity and interpretability on the one hand, and modelling flexibility on the other. Our theory permits the longest timescale to increase with the sample size. A simulation study is presented to show the usefulness of our approach. Some possible extensions are also discussed, including the Adaptive Multiscale Vector AutoRegressive model (AMVAR) for multivariate time series, which demonstrates promising performance in the data example on UK and US unemployment rates. The R package amar (Baranowski et al., 2022) provides an efficient implementation of the AMAR framework.

picture_as_pdf

picture_as_pdf
SS_supp_R3.pdf
subject
Accepted Version

Download
picture_as_pdf

picture_as_pdf
SS_R3_final.pdf
subject
Accepted Version

Download

Export as

EndNote BibTeX Reference Manager Refer Atom Dublin Core JSON Multiline CSV
Export