Incremental procedures for partitioning highly intermixed multi-class datasets into hyper-spherical and hyper-ellipsoidal clusters

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摘要

Two procedures for partitioning large collections of highly intermixed datasets of different classes into a number of hyper-spherical or hyper-ellipsoidal clusters are presented. The incremental procedures are to generate a minimum numbers of hyper-spherical or hyper-ellipsoidal clusters with each cluster containing a maximum number of data points of the same class. The procedures extend the move-to-front algorithms originally designed for construction of minimum sized enclosing balls or ellipsoids for dataset of a single class. The resulting clusters of the dataset can be used for data modeling, outlier detection, discrimination analysis, and knowledge discovery.

论文关键词:Data models,Data clustering,Mini-max partition,Geometrical approximation,Knowledge discovery

论文评审过程:Received 12 November 2006, Revised 17 February 2007, Accepted 15 March 2007, Available online 31 March 2007.

论文官网地址:https://doi.org/10.1016/j.datak.2007.03.006