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Changepoint Detection with Outliers Based on RWPCA

Changepoint Detection with Outliers Based on RWPCA
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摘要 Changepoint detection faces challenges when outlier data are present. This paper proposes a multivariate changepoint detection method which is based on the robust WPCA projection direction and the robust RFPOP method, RWPCA-RFPOP method. Our method is double robust which is suitable for detecting mean changepoints in multivariate normal data with high correlations between variables that include outliers. Simulation results demonstrate that our method provides strong guarantees on both the number and location of changepoints in the presence of outliers. Finally, our method is well applied in an ACGH dataset. Changepoint detection faces challenges when outlier data are present. This paper proposes a multivariate changepoint detection method which is based on the robust WPCA projection direction and the robust RFPOP method, RWPCA-RFPOP method. Our method is double robust which is suitable for detecting mean changepoints in multivariate normal data with high correlations between variables that include outliers. Simulation results demonstrate that our method provides strong guarantees on both the number and location of changepoints in the presence of outliers. Finally, our method is well applied in an ACGH dataset.
作者 Xin Zhang Sanzhi Shi Yuting Guo Xin Zhang;Sanzhi Shi;Yuting Guo(School of Mathematics and Statistics, Changchun University of Science and Technology, Changchun, China)
出处 《Journal of Applied Mathematics and Physics》 2024年第7期2634-2651,共18页 应用数学与应用物理(英文)
关键词 RWPCA-RFPOP Double Robust Outlier Detection Biweight Loss RWPCA-RFPOP Double Robust Outlier Detection Biweight Loss
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