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基于最大最小距离法的多中心聚类算法
引用本文:周涓,熊忠阳,张玉芳,任芳.基于最大最小距离法的多中心聚类算法[J].计算机应用,2006,26(6):1425-1427.
作者姓名:周涓  熊忠阳  张玉芳  任芳
作者单位:重庆大学,计算机学院,重庆,400030
摘    要:针对k-means算法的缺陷,提出了一种新的多中心聚类算法。运用两阶段最大最小距离法搜索出最佳初始聚类中心,将原始数据集分割成小类后用合并算法形成最终类,即用多个聚类中心联合代表一个延伸状或者较大形状的簇。仿真实验表明:该算法能够智能地确定初始聚类种子个数,对不规则状数据集进行有效聚类, 聚类性能显著优于k-means算法。

关 键 词:聚类  最大最小距离法  多中心  抽样
文章编号:1001-9081(2006)06-1425-03
收稿时间:2005-12-19
修稿时间:2005-12-192006-02-23

Multiseed clustering algorithm based on max-min distance means
ZHOU Juan,XIONG Zhong-yang,ZHANG Yu-fang,REN Fang.Multiseed clustering algorithm based on max-min distance means[J].journal of Computer Applications,2006,26(6):1425-1427.
Authors:ZHOU Juan  XIONG Zhong-yang  ZHANG Yu-fang  REN Fang
Affiliation:College of Computer, Chongqing University, Chongqing 400030, China
Abstract:A novel multiseed clustering algorithm was proposed aiming at shortcomings of k-means algorithm. This algorithm could find optimal initial starting points applying iterative max-rain distance means and then combined the small clusters from given data set into final ones, for an elongated or large cluster could be considered as the union of a few small distinct hyperspherieal clusters. Experimcntal results demonstrate that the improved algorithm can automatically obtain the number of initial clusters, be effective on data set of irregular shapes and lead to better solutions than k-means algorithm.
Keywords:clustering  max-min distance means  multiseed  sampling
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