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一种融合了异常数据识别的CMM改进算法
引用本文:郑 滨,任 蕾. 一种融合了异常数据识别的CMM改进算法[J]. 计算机工程与应用, 2013, 49(8): 120-124
作者姓名:郑 滨  任 蕾
作者单位:1.上海海事大学 商船学院,上海 2001352.上海海事大学 信息工程学院,上海 200135
摘    要:针对聚类过程中有意义的异常数据难以识别的问题,在改进CMM算法的基础上,提出了一种融合了异常数据识别的层次聚类算法。采用CMM方法提出的原子簇思想,通过重新定义簇中心、噪声判断标准以及改进循环机制等手段提高聚类准确性及算法效率。提出了异常数据的概念和定义,并将其识别算法引入聚类过程过程。基于仿真及实际数据的实验结果证明,该算法能够根据设定参数准确识别异常数据,同时其聚类准确性及性能针对CMM算法也有了相应提高。

关 键 词:数据挖掘  聚类  异常数据识别  多中心点聚类(CMM)算法  

Improved CMM algorithm with abnormal data recognition
ZHENG Bin,REN Lei. Improved CMM algorithm with abnormal data recognition[J]. Computer Engineering and Applications, 2013, 49(8): 120-124
Authors:ZHENG Bin  REN Lei
Affiliation:1.College of Merchant Marine, Shanghai Maritime University, Shanghai 200135, China2.College of Information Engieering, Shanghai Maritime University, Shanghai 200135, China
Abstract:A hierarchical clustering algorithm with abnormal data recognition, CDCMM algorithm, is introduced regarding the problem of recognizing meaningful data which is non-mainstream in mining process. Based on the concept of atomic clustering from CMM algorithm, CDCMM improves clustering accuracy and performance by redefining the concept of cluster medoid and the standard used to distinguish noise data, and improving the circulation mechanism. The concept and definition of abnormal data are introduced and its recognition algorithm is added to clustering procedure. Experimental results on both simulation and production dataset show that the proposed algorithm can recognize the abnormal correctly data with responding parameters, and obtain higher clustering accuracy and performance.
Keywords:data mining  clustering  abnormal data recognition  Clustering using Multi-Medoids(CMM)  
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