بيانات النشر: Umeå universitet, Institutionen för matematik och matematisk statistik
Department of Mathematical Sciences, Chalmers University of Technology & University of Gothenburg, Gothenburg, Sweden
Department of Statistics, Computer Science, and Mathematics, Public University of Navarre, Pamplona, Spain
Department of Mathematics, University Jaume I, Castellón, Spain
نبذة مختصرة : Detecting change-points in multivariate settings is usually carried out by analyzing all marginals either independently, via univariate methods, or jointly, through multivariate approaches. The former discards any inherent dependencies between different marginals and the latter may suffer from domination/masking among different change-points of distinct marginals. As a remedy, we propose an approach which groups marginals with similar temporal behaviors, and then performs group-wise multivariate change-point detection. Our approach groups marginals based on hierarchical clustering using distances which adjust for inherent dependencies. Through a simulation study we show that our approach, by preventing domination/masking, significantly enhances the general performance of the employed multivariate change-point detection method. Finally, we apply our approach to two datasets: (i) Land Surface Temperature in Spain, during the years 2000–2021, and (ii) The WikiLeaks Afghan War Diary data.
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