Optimal Change-Point Estimation In Time Series

ANNALS OF STATISTICS(2021)

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摘要
This paper establishes asymptotic theory for optimal estimation of change points in general time series models under alpha-mixing conditions. We show that the Bayes-type estimator is asymptotically minimax for change-point estimation under squared error loss. Two bootstrap procedures are developed to construct confidence intervals for the change points. An approximate limiting distribution of the change-point estimator under small change is also derived. Simulations and real data applications are presented to investigate the finite sample performance of the Bayes-type estimator and the bootstrap procedures.
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关键词
Bayes-type estimator, confidence interval, double-sided random process, piecewise stationary time series, structural break
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