Spectral Change Point Estimation for High Dimensional Time Series by Sparse Tensor Decomposition
Multivariate time series may be subject to partial structural changes over certain frequency band, for instance, in neuroscience. We study the change point detection problem with high dimensional time series, within the framework of frequency domain. The overarching goal is to locate all change poin...
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Main Authors | , |
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Format | Journal Article |
Language | English |
Published |
17.05.2023
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Subjects | |
Online Access | Get full text |
DOI | 10.48550/arxiv.2305.10656 |
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Summary: | Multivariate time series may be subject to partial structural changes over
certain frequency band, for instance, in neuroscience. We study the change
point detection problem with high dimensional time series, within the framework
of frequency domain. The overarching goal is to locate all change points and
delineate which series are activated by the change, over which frequencies. In
practice, the number of activated series per change and frequency could span
from a few to full participation. We solve the problem by first computing a
CUSUM tensor based on spectra estimated from blocks of the time series. A
frequency-specific projection approach is applied for dimension reduction. The
projection direction is estimated by a proposed tensor decomposition algorithm
that adjusts to the sparsity level of changes. Finally, the projected CUSUM
vectors across frequencies are aggregated for change point detection. We
provide theoretical guarantees on the number of estimated change points and the
convergence rate of their locations. We derive error bounds for the estimated
projection direction for identifying the frequency-specific series activated in
a change. We provide data-driven rules for the choice of parameters. The
efficacy of the proposed method is illustrated by simulation and a stock
returns application. |
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DOI: | 10.48550/arxiv.2305.10656 |