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Parallel k/h-Means Clustering for Large Data Sets

Kilian StoffelContact Information and Abdelkader BelkonieneContact Information

(6)  Groupe Informatique, Université de Neuchâtel, Pierre-à-Mazel 7, CH, 2000 Neuchâtel, Switzerland
Abstract
This paper describes the realization of a parallel version of the k/h-means clustering algorithm. This is one of the basic algorithms used in a wide range of data mining tasks. We show how a database can be distributed and how the algorithm can be applied to this distributed database. The tests conducted on a network of 32 PCs showed for large data sets a nearly ideal speedup.

Contact Information Kilian Stoffel
Email: Kilian.Stoffel@seco.unine.ch

Contact Information Abdelkader Belkoniene
Email: Abdelkader.Belkoniene@seco.unine.ch
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