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  "Title": "Assessment of Cluster Stability by Randomized Maps",
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  "Description": "The reliability of clusters is estimated using random\nprojections. A set of stability measures is provided to assess\nthe reliability of the clusters discovered by a generic\nclustering algorithm. The stability measures are taylored to\nhigh dimensional data (e.g. DNA microarray data) (Valentini, G\n(2005), <doi:10.1093/bioinformatics/bti817>.",
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