ONLINE CHANGE-POINT DETECTION FOR MATRIX-VALUED TIME SERIES WITH LATENT TWO-WAY FACTOR STRUCTURE

成果类型:
Article
署名作者:
He, Yong; Kong, Xinbing; Trapani, Lorenzo; Yu, Long
署名单位:
Shandong University; Nanjing Audit University; University of Pavia; Shanghai University of Finance & Economics
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/24-AOS2410
发表日期:
2024
页码:
1646-1670
关键词:
dimensional factor models sequential detection number tests
摘要:
This paper proposes a novel methodology for the online detection of changepoints in the factor structure of large matrix time series. Our approach is based on the well-known fact that, in the presence of a changepoint, the number of spiked eigenvalues in the second moment matrix of the data increases (e.g., in the presence of a change in the loadings, or if a new factor emerges). Based on this, we propose two families of procedures-one based on the fluctuations of partial sums, and one based on extreme value theory-to monitor whether the first nonspiked eigenvalue diverges after a point in time in the monitoring horizon, thereby indicating the presence of a changepoint. Our procedure is based only on rates; at each point in time, we randomise the estimated eigenvalue, thus obtaining a normally distributed sequence which is i.i.d. with mean zero under the null of no break, whereas it diverges to positive infinity in the presence of a changepoint. We base our monitoring procedures on such sequence. Extensive simulation studies and empirical analysis justify the theory. An R package implementing the procedure is available on CRAN.
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