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  "Title": "Archetypoid Algorithms and Anomaly Detection",
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  "Author": "Guillermo Vinue, Irene Epifanio",
  "Maintainer": "Guillermo Vinue <Guillermo.Vinue@uv.es>",
  "Description": "Collection of several algorithms to obtain archetypoids\nwith small and large databases, and with both classical\nmultivariate data and functional data (univariate and\nmultivariate). Some of these algorithms also allow to detect\nanomalies (outliers). Please see Vinue and Epifanio (2020)\n<doi:10.1007/s11634-020-00412-9>.",
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