Comparative analysis on the selection of number of clusters in community detection

24 Jun 2016Tatsuro KawamotoYoshiyuki Kabashima

We conduct a comparative analysis on various estimates of the number of clusters in community detection. An exhaustive comparison requires testing of all possible combinations of frameworks, algorithms, and assessment criteria... (read more)

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