Sequential clustering with radius and split criteria

Sequential clustering aims at determining homogeneous and/or well-separated clusters within a given set of entities, one at a time, until no more such clusters can be found. We consider a bi-criterion sequential clustering problem in which the radius of a cluster (or maximum dissimilarity between an...

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Published inCentral European journal of operations research Vol. 21; no. Suppl 1; pp. 95 - 115
Main Authors Mladenovic, Nenad, Hansen, Pierre, Brimberg, Jack
Format Journal Article
LanguageEnglish
Published Berlin/Heidelberg Springer-Verlag 01.06.2013
Springer
Springer Nature B.V
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ISSN1435-246X
1613-9178
DOI10.1007/s10100-012-0258-3

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Summary:Sequential clustering aims at determining homogeneous and/or well-separated clusters within a given set of entities, one at a time, until no more such clusters can be found. We consider a bi-criterion sequential clustering problem in which the radius of a cluster (or maximum dissimilarity between an entity chosen as center and any other entity of the cluster) is chosen as a homogeneity criterion and the split of a cluster (or minimum dissimilarity between an entity in the cluster and one outside of it) is chosen as a separation criterion. An O ( N 3 ) algorithm is proposed for determining radii and splits of all efficient clusters, which leads to an O ( N 4 ) algorithm for bi-criterion sequential clustering with radius and split as criteria. This algorithm is illustrated on the well known Ruspini data set.
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ISSN:1435-246X
1613-9178
DOI:10.1007/s10100-012-0258-3