N’Cir et al., 2015 - Google Patents

Overview of overlapping partitional clustering methods

N’Cir et al., 2015

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Document ID
4741474303355062138
Author
N’Cir C
Cleuziou G
Essoussi N
Publication year
Publication venue
Partitional Clustering Algorithms

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Identifying non-disjoint clusters is an important issue in clustering referred to as Overlapping Clustering. While traditional clustering methods ignore the possibility that an observation can be assigned to several groups and lead to k exhaustive and exclusive clusters …
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