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Sufficient Reduction in Multivariate Surveillance
Authors:Marianne Frisén  Eva Andersson  Linus Schiöler
Affiliation:1. Statistical Research Unit , University of Gothenburg , G?teborg , Sweden marianne.frisen@statistics.gu.se;3. Statistical Research Unit , University of Gothenburg , G?teborg , Sweden;4. Occupational and Environmental Medicine , Sahlgrenska Academy and Sahlgrenska University Hospital, University of Gothenburg , G?teborg , Sweden;5. Statistical Research Unit , University of Gothenburg , G?teborg , Sweden
Abstract:
The relation between change points in multivariate surveillance is important but seldom considered. The sufficiency principle is here used to clarify the structure of some problems, to find efficient methods, and to determine appropriate evaluation metrics. We study processes where the changes occur simultaneously or with known time lags. The surveillance of spatial data is one example where known time lags can be of interest. A general version of a theorem for the sufficient reduction of processes that change with known time lags is given. A simulation study illustrates the benefits or the methods based on the sufficient statistics.
Keywords:Change-points  Exponential family  Inference principles  MEWMA  Monitoring
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