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Symmetry Based Automatic Evolution of Clusters: A New Approach to Data Clustering

机译:基于对称性的集群自动进化:一种新的数据聚类方法

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摘要

We present a multiobjective genetic clustering approach, in which data points are assigned to clusters based on new line symmetry distance. The proposed algorithm is called multiobjective line symmetry based genetic clustering (MOLGC). Two objective functions, first the Davies-Bouldin (DB) index and second the line symmetry distance based objective functions, are used. The proposed algorithm evolves near-optimal clustering solutions using multiple clustering criteria, without a priori knowledge of the actual number of clusters. The multiple randomized K dimensional (Kd) trees based nearest neighbor search is used to reduce the complexity of finding the closest symmetric points. Experimental results based on several artificial and real data sets show that proposed clustering algorithm can obtain optimal clustering solutions in terms of different cluster quality measures in comparison to existing SBKM and MOCK clustering algorithms.
机译:我们提出了一种多目标遗传聚类方法,其中基于新的线对称距离将数据点分配给聚类。所提出的算法称为基于多目标线对称的遗传聚类(MOLGC)。使用两个目标函数,第一个是Davies-Bouldin(DB)索引,第二个是基于线对称距离的目标函数。所提出的算法使用多个聚类标准来发展接近最优的聚类解决方案,而无需先验知识的实际数目。使用基于多个随机K维(Kd)树的最近邻居搜索来减少查找最接近对称点的复杂性。基于几个人工和真实数据集的实验结果表明,与现有的SBKM和MOCK聚类算法相比,所提出的聚类算法可以根据不同的聚类质量度量获得最佳的聚类解决方案。

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