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面向限制K-means算法的迭代学习分配次序策略
引用本文:邱 烨,何振峰.面向限制K-means算法的迭代学习分配次序策略[J].计算机科学,2012,39(8):196-198,209.
作者姓名:邱 烨  何振峰
作者单位:福州大学数学与计算机科学学院 福州350108
基金项目:国家自然科学基金项目,福建省教育厅科技项目
摘    要:结合关联限制K-means算法能有效地提高聚类结果,但对数据对象分配次序却非常敏感。为获得一个好的分配次序,提出了一种基于分配次序聚类不稳定性的迭代学习算法。根据Cop-Kmeans算法的稳定性特点,采用迭代思想,逐步确定数据对象的稳定性,进而确定分配次序。实验结果表明,基于分配次序聚类不稳定性迭代学习算法有效地提高了Cop-Kmeans算法的准确率。

关 键 词:聚类分析  半监督聚类  K-means  关联限制

Iterative Learning Assignment Order for Constrained K-means Algorithm
QIU Ye , HE Zhen-feng.Iterative Learning Assignment Order for Constrained K-means Algorithm[J].Computer Science,2012,39(8):196-198,209.
Authors:QIU Ye  HE Zhen-feng
Affiliation:(School of Mathematics and Computer Science,Fuzhou University,Fuzhou 350108,China)
Abstract:Constrained K-means algorithm often improves clustering accuracy, but sensitive to the assignment order of instances. A clustering uncertainty based assignment order Iterative Learning Algorithm(UALA) was proposed to gain a good assignment order. The instances stability was gradually confirmed by iterative thought according to the characteristics of Cop-Kmeans algorithm stability, and then assignment order was confirmed. The experiment demonstrates that the algorithm effectively improves the accuracy of Cop-Kmeans algorithm.
Keywords:Clustering analysis  Semi-supervise clustering  K-means  Instancelevel constraints
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