首页 | 本学科首页   官方微博 | 高级检索  
     

子空间可能性聚类机制研究
引用本文:关庆,邓赵红,王士同.子空间可能性聚类机制研究[J].计算机工程,2011,37(5):224-226.
作者姓名:关庆  邓赵红  王士同
作者单位:江南大学信息工程学院,江苏,无锡,214122
基金项目:国家自然科学基金,江苏省自然科学基金
摘    要:可能性C-均值(PCM)聚类作为经典的基于原型的聚类方法,在处理高维数据集时性能骤降,无法检测出高维空间中嵌入的有效子空间。针对此不足,在PCM基础上引入子空间聚类机制,提出子空间可能性聚类算法SPC。该方法保留了PCM方法的优点,且对高维数据具有较好的适应性,能够有效检测各类所处的子空间。仿真实验验证了SPC算法的有效性。

关 键 词:高维数据  子空间聚类  特征加权  可能性聚类

Research on Subspace Possibilistic Clustering Mechanism
GUAN Qing,DENG Zhao-hong,WANG Shi-tong.Research on Subspace Possibilistic Clustering Mechanism[J].Computer Engineering,2011,37(5):224-226.
Authors:GUAN Qing  DENG Zhao-hong  WANG Shi-tong
Affiliation:(School of Information Engineering,Jiangnan University,Wuxi 214122,China)
Abstract:The obvious shortcomings of Possibilistic C-Means(PCM) algorithm is that the performance will be significantly reduced for high dimensional data sets and it can not effectively identify the useful subspace embedded in the high dimensional space. In order to overcome the weakness, the subspace clustering mechanism is introduced and the Subspace Possibilistic Clustering(SPC) algorithm is presented. It not only has the advantages of PCM algorithm but also has the characteristic of the classic subspace clustering algorithms. Namely, it has good adaptability to high dimensional data, and can detect the subspaces for each cluster effectively. Simulation experiments with synthetic and real data sets demonstrate the effectiveness and the merits of SPC.
Keywords:high dimensional data  subspace clustering  feature weighting  possibilistic clustering
本文献已被 CNKI 万方数据 等数据库收录!
点击此处可从《计算机工程》浏览原始摘要信息
点击此处可从《计算机工程》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号