Rank-based multiple change-point detection |
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Authors: | Yunlong Wang Xuemin Zi |
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Affiliation: | 1. Institute of Statistics and LPMC Nankai University, Tianjin, China;2. School of Science, Tianjin University of Technology and Education, Tianjin, China |
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Abstract: | AbstractA nonparametric procedure is proposed to estimate multiple change-points of location changes in a univariate data sequence by using ranks instead of the raw data. While existing rank-based multiple change-point detection methods are mostly based on sequential tests, we treat it as a model selection problem. We derive the corresponding Schwarz’s information criterion for rank-statistics, theoretically prove the consistency of the change-point estimator and use a pruned dynamic programing algorithm to achieve the change-point estimator. Simulation studies show our method’s robustness, effectiveness and efficiency in detecting mean-changes. We also apply the method to a gene dataset as an illustration. |
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Keywords: | Multiple change-points rank method SIC robustness |
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