Detecting change-points in extremes

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Abstract

Even though most work on change-point estimation focuses on changes in the mean, changes in the variance or in the tail distribution can lead to more extreme events. In this paper, we develop a new method of detecting and estimating the change-points in the tail of multiple time series data. In addition, we adapt existing tail change-point detection methods to our specific problem and conduct a thorough comparison of different methods in terms of performance on the estimation of change-points and computational time. We also examine three locations on the U.S. northeast coast and demonstrate that the methods are useful for identifying changes in seasonally extreme warm temperatures.

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Dupuis, D. J., Sun, Y., & Wang, H. J. (2015). Detecting change-points in extremes. Statistics and Its Interface, 8(1), 19–31. https://doi.org/10.4310/SII.2015.v8.n1.a3

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