Change-point detection using spectral PCA for multivariate time series
Change-point detection using spectral PCA for multivariate time series
We propose a two-stage approach Spec PC-CP to identify change points in multivariate time series. In the first stage, we obtain a low-dimensional summary of the high-dimensional time series by Spectral Principal Component Analysis (Spec-PCA). In the second stage, we apply cumulative sum-type test on the Spectral PCA component using a binary segmentation algorithm. Compared with existing approaches, the proposed method is able to capture the lead-lag relationship in time series. Our simulations demonstrate that the Spec PC-CP method performs significantly better than competing methods for detecting change points in high-dimensional time series. The results on epileptic seizure EEG data and stock data also indicate that our new method can efficiently {detect} change points corresponding to the onset of the underlying events.
Tong Shen、Zhaoxia Yu、Hernando Ombao、Shuhao Jiao
计算技术、计算机技术
Tong Shen,Zhaoxia Yu,Hernando Ombao,Shuhao Jiao.Change-point detection using spectral PCA for multivariate time series[EB/OL].(2021-01-12)[2025-08-02].https://arxiv.org/abs/2101.04334.点此复制
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