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Clustering with artificial neural networks and traditional techniques

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dc.contributor.author Tambouratzis, G en
dc.contributor.author Tambouratzis, T en
dc.contributor.author Tambouratzis, D en
dc.date.accessioned 2014-06-06T06:45:27Z
dc.date.available 2014-06-06T06:45:27Z
dc.date.issued 2003 en
dc.identifier.issn 08848173 en
dc.identifier.uri http://dx.doi.org/10.1002/int.10095 en
dc.identifier.uri http://62.217.125.90/xmlui/handle/123456789/2449
dc.subject.other Artificial intelligence en
dc.subject.other Distributed computer systems en
dc.subject.other Mathematical models en
dc.subject.other Parallel processing systems en
dc.subject.other Pattern recognition en
dc.subject.other Statistical methods en
dc.subject.other Clustering en
dc.subject.other Harmony theory network en
dc.subject.other Self organizing logic network en
dc.subject.other Neural networks en
dc.title Clustering with artificial neural networks and traditional techniques en
heal.type journalArticle en
heal.identifier.primary 10.1002/int.10095 en
heal.publicationDate 2003 en
heal.abstract In this article, two clustering techniques based on neural networks are introduced. The two neural network models are the Harmony theory network (HTN) and the self-organizing logic neural network (SOLNN), both of which are characterized by parallel processing, a distributed architecture, and a large number of nodes. After describing their clustering characteristics and potential, a comparison to classical statistical techniques is performed. This comparison allows the creation of a correspondence between each neural network clustering technique and particular metrics as used by the corresponding statistical methods, which reflect the affinity of the clustered patterns. In particular, the HTN is found to perform the clustering task with an accuracy similar to the best statistical methods, while it is further capable of proposing an optimal number of groups into which the patterns may be clustered. On the other hand, the SOLNN combines a high clustering accuracy with the ability to cluster higher-dimensional patterns without a considerable increase in the processing time. en
heal.journalName International Journal of Intelligent Systems en
dc.identifier.issue 4 en
dc.identifier.volume 18 en
dc.identifier.doi 10.1002/int.10095 en
dc.identifier.spage 405 en
dc.identifier.epage 428 en


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