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Detecting influential observations in Watson data
Authors:C. M. Barros  G. J. A. Amaral  A. D. C. Nascimento  A. H. M. A. Cysneiros
Affiliation:Departamento de Estatística, Universidade Federal de Pernambuco, Recife, Pernambuco, Brasil
Abstract:A method for detecting outliers in axial data has been proposed by Best and Fisher (1986 Best, D.J., Fisher, N.I. (1986). Goodness-of-fit and discordancy tests for samples from the Watson distribution on the sphere. Aust. J. Stat. 28:1331.[Crossref] [Google Scholar]). For extending that work, we propose four new methods. Two of them are suitable for outlier detection and they depend on the classic geodesic distance and a modified version of this distance. The other two procedures, which are designed for influential observation detection, are based on the Kullback–Leibler and Cook’s distances. Some simulation experiments are performed to compare all considered methods. Detection and error rates are used as comparison criteria. Numerical results provide evidence in favor of the KL distance.
Keywords:Cook’s distance  Influential observations  Kullback–Leibler distance  Outliers
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