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半监督的自动聚类
引用本文:潘章明. 半监督的自动聚类[J]. 计算机应用, 2010, 30(10): 2614-2617
作者姓名:潘章明
作者单位:广东金融学院
摘    要:基于进化算法的自动聚类方法在处理聚类结构比较松散的数据集时,存在聚类准确性不高、收敛速度慢的缺陷,为此提出一种半监督的自动聚类算法。该算法从调整染色体的解码过程入手,首先从染色体中分离出聚类数和所有的质心,然后使用最近邻规则滤去部分偏离数据集分布区域的无效质心,最后嵌入先验信息辅助K-均值方法对剩余的质心聚类,进一步优化染色体的解码结果。实验结果表明,该算法对聚类结构紧密或松散的数据集均可给出较精确的聚类结果。

关 键 词:半监督聚类  自动聚类  差分进化  全局优化  K-均值  
收稿时间:2010-04-09
修稿时间:2010-06-09

Semi-supervised automatic clustering
PAN Zhang-ming. Semi-supervised automatic clustering[J]. Journal of Computer Applications, 2010, 30(10): 2614-2617
Authors:PAN Zhang-ming
Abstract:The evolutionary algorithm based automatic clustering methods are lack of accuracy and slow in converging while dealing with non-compact clusters. A semi-supervised automatic clustering algorithm was proposed to solve this problem. The method started with the decoding of chromosomes. First was to separate the cluster number and all of the centroids from chromosome, then to filter the centroids of no effects using nearest neighbor algorithm. After incorporating the prior information of the data set, the decoding results could be further improved using K-means method to cluster the rest centroids. The experimental results verify the effectiveness of the proposed method for data sets with both compact and non-compact cluster structures.
Keywords:semi-supervised clustering   automatic clustering   differential evolution   global optimization   K-means
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