Abstract
We propose an inference method for detecting multiple change points in high-dimensional time series, targeting dense or spatially clustered signals. Our method aggregates moving sum (MOSUM) statistics cross-sectionally by an ℓ2-norm and maximizes them over time. We further introduce a novel Two-Way MOSUM, which utilizes spatial-temporal moving regions to search for breaks, with the added advantage of enhancing testing power when breaks occur in only a few groups. The limiting distribution of an ℓ2aggregated statistic is established for testing break existence by extending a high-dimensional Gaussian approximation theorem to spatial-temporal non-stationary processes. Simulation studies exhibit promising performance of our test in detecting nonsparse weak signals. Two applications on equity returns and COVID-19 cases in the United States show the real-world relevance of our algorithms. The R package “L2hdchange” is available on CRAN.
Original language | English |
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Pages (from-to) | 602-627 |
Number of pages | 26 |
Journal | Annals of statistics |
Volume | 52 |
Issue number | 2 |
DOIs | |
Publication status | Published - Apr-2024 |
Keywords
- Gaussian approximation
- multiple change-point detection
- Nonlinear time series
- spatial dependence
- temporal
- Two-Way MOSUM
- ℓ inference