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  "Description": "Contains techniques for mining large and high-dimensional\ndata sets by using the concept of Intrinsic Dimension (ID).\nHere the ID is not necessarily an integer. It is extended to\nfractal dimensions. And the Morisita estimator is used for the\nID estimation, but other tools are included as well.",
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  "URL": "https://www.sites.google.com/site/jeangolayresearch/",
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  "Note": "The authors are grateful to Mikhail Kanevski, Michael\nLeuenberger, Carmen D. Vega Orozco and Fabian Guignard for many\nfruitful discussions about the use of intrinsic dimension in\ndata mining.",
  "Repository": "https://jeangolay.r-universe.dev",
  "Date/Publication": "2021-05-03 09:41:09 UTC",
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