基于模糊减法聚类和自组织映射的二级聚类质量改进

Erick Alfons Lisangan, Aina Musdholifah, S. Hartati
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引用次数: 5

摘要

近年来,聚类算法将传统方法与人工智能相结合。FSC-SOM设计用于处理SOM的问题,如定义簇的数量和神经元权值的初始值。FSC计算聚类数量和聚类中心作为SOM的参数。FSC-SOM有望提高FSC的质量,因为集群中心的确定经过两次处理,即在FSC中搜索高密度的数据,然后在SOM中更新集群中心。FSC-SOM使用10个数据集进行测试,这些数据集使用F-Measure、熵、Silhouette Index和Dunn Index进行测量。结果表明,FSC-SOM可以改善FSC与SOM的聚类中心,从而获得更好的聚类结果质量。FSC- som的聚类结果优于或等于外部效度测量值和内部效度测量值证明的FSC聚类结果。
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Two Level Clustering for Quality Improvement using Fuzzy Subtractive Clustering and Self-Organizing Map
Recently, clustering algorithms combined conventional methods and artificial intelligence. FSC-SOM is designed to handle the problem of SOM, such as defining the number of clusters and initial value of neuron weights. FSC find the number of clusters and the cluster centers which become the parameter of SOM. FSC-SOM is expected to improve the quality of FSC since the determination of the cluster centers are processed twice i.e. searching for data with high density at FSC then updating the cluster centers at SOM. FSC-SOM was tested using 10 datasets that is measured with F-Measure, entropy, Silhouette Index, and Dunn Index. The result showed that FSC-SOM can improve the cluster center of FSC with SOM in order to obtain the better quality of clustering results. The clustering result of FSC-SOM is better than or equal to the clustering result of FSC that proven by the value of external and internal validity measurement.
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