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首页> 外文期刊>Knowledge and Data Engineering, IEEE Transactions on >Dynamic Dissimilarity Measure for Support-Based Clustering
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Dynamic Dissimilarity Measure for Support-Based Clustering

机译:基于支持的聚类的动态差异度量

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摘要

Clustering methods utilizing support estimates of a data distribution have recently attracted much attention because of their ability to generate cluster boundaries of arbitrary shape and to deal with outliers efficiently. In this paper, we propose a novel dissimilarity measure based on a dynamical system associated with support estimating functions. Theoretical foundations of the proposed measure are developed and applied to construct a clustering method that can effectively partition the whole data space. Simulation results demonstrate that clustering based on the proposed dissimilarity measure is robust to the choice of kernel parameters and able to control the number of clusters efficiently.
机译:利用数据分布的支持估计的聚类方法最近吸引了很多关注,因为它们能够生成任意形状的聚类边界并有效地处理离群值。在本文中,我们提出了一种基于与支持估计功能相关联的动力学系统的新颖差异度量。提出了该措施的理论基础,并将其应用于构建可有效划分整个数据空间的聚类方法。仿真结果表明,基于所提出的相异性度量的聚类算法对于选择内核参数具有鲁棒性,并且能够有效地控制聚类数量。

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