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CE3: A three-way clustering method based on mathematical morphology

机译:CE3:基于数学形态学的三向聚类方法

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Many existing clustering methods produce clusters with clear and sharp boundaries, which does not truly reflect the fact that a cluster may not necessarily have a well-defined boundary in many real world situations. In this paper, by combining ideas of erosion and dilation from mathematical morphology and principles of three-way decision, we propose a framework of a contraction-and-expansion based three-way clustering called CE3. A three-way cluster is defined by a nested pair of sets called the core and the support of the cluster, respectively. A stronger relationship holds between objects in the core and a weaker relationship holds between objects in the support. Given a cluster obtained from a hard clustering method, CE3 uses a contraction operation to shrink the cluster into the core of a three-way cluster and uses an expansion operation to enlarge the cluster into the support. The difference between the support and the core is called the fringe region, representing an unsharp boundary of a cluster. Within the CE3 framework, we can define different types of contraction and expansion operations. We can apply the CE3 framework on the top of any existing clustering method. As examples for demonstration, we introduce a pair of neighbor-based contraction and expansion operations and apply the CE3 framework on the top of k-means and spectral clustering, respectively. We use one synthetic data set, five UCI data sets, and three USPS data sets to evaluate experimentally the performance of CE3. The results show that CE3 is in fact effective in revealing cluster structures.
机译:许多现有的聚类方法产生的边界清晰而清晰的集群,并不能真正反映出在许多实际情况下集群不一定具有明确定义的边界这一事实。在本文中,通过结合数学形态学和三向决策原理中的腐蚀和膨胀思想,我们提出了一种基于收缩和扩展的三向聚类框架,称为CE3。三向集群是由一组嵌套的对定义的,分别称为集群的核心和支持。核心中的对象之间保持更强的关系,而支撑中的对象之间保持较弱的关系。给定从硬群集方法获得的群集,CE3使用收缩操作将群集收缩为三向群集的核心,并使用扩展操作将群集扩展为支撑。支撑和核心之间的差异称为边缘区域,表示群集的不清晰边界。在CE3框架内,我们可以定义不同类型的收缩和膨胀操作。我们可以将CE3框架应用于任何现有集群方法的顶部。作为演示示例,我们介绍了一对基于邻居的收缩和扩展操作,并将CE3框架分别应用于k均值和频谱聚类的顶部。我们使用一个综合数据集,五个UCI数据集和三个USPS数据集来实验评估CE3的性能。结果表明,CE3实际上有效地揭示了簇结构。

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