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Statistica Sinica 31 (2021), 491-517

A SELF-NORMALIZED APPROACH TO
SEQUENTIAL CHANGE-POINT DETECTION FOR TIME SERIES

Ngai Hang Chan1,2, Wai Leong Ng3 and Chun Yip Yau2

1Southwestern University of Finance and Economics,
2The Chinese University of Hong Kong and 3Hang Seng University of Hong Kong

Abstract: We propose a self-normalization sequential change-point detection method for time series. To test for parameter changes, most traditional sequential monitoring tests use a cumulative sum-based test statistic, which involves a long-run variance estimator. However, such estimators require choosing a bandwidth parameter, which may be sensitive to the performance of the test. Moreover, traditional tests usually suffer from severe size distortion as a result of the slow convergence rate to the limit distribution in the early monitoring stage. We propose self-normalization method to address these issues. We establish the null asymptotic and the consistency of the proposed sequential change-point test under general regularity conditions. Simulation experiments and an applications to railway-bearing temperature data illustrate and verify the proposed method.

Key words and phrases: ARMA-GARCH model, on-line detection, pairwise likelihood, quickest detection, sequential monitoring, stochastic volatility model.

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