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A Three-Level Optimization Model for Nonlinearly Separable Clustering

机译:一个三级优化模型,用于非线性可分离聚类

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Due to the complex structure of the real-world data, nonlinearly separable clustering is one of popular and widely studied clustering problems. Currently, various types of algorithms, such as kernel k-means, spectral clustering and density clustering, have been developed to solve this problem. However, it is difficult for them to balance the efficiency and effectiveness of clustering, which limits their real applications. To get rid of the deficiency, we propose a three-level optimization model for nonlinearly separable clustering which divides the clustering problem into three sub-problems: a linearly separable clustering on the object set, a nonlinearly separable clustering on the cluster set and an ensemble clustering on the partition set. An iterative algorithm is proposed to solve the optimization problem. The proposed algorithm can use low computational cost to effectively recognize nonlinearly separable clusters. The performance of this algorithm has been studied on synthetical and real data sets. Comparisons with other nonlinearly separable clustering algorithms illustrate the efficiency and effectiveness of the proposed algorithm.
机译:由于现实世界数据的复杂结构,非线性可分离的聚类是流行和广泛研究的聚类问题之一。目前,已经开发出各种类型的算法,例如核K-Means,谱聚类和密度聚类,以解决这个问题。但是,它们难以平衡聚类的效率和有效性,这限制了其真实应用。要摆脱缺陷,我们提出了一个三级优化模型,用于非线性可分离的聚类,将聚类问题划分为三个子问题:对象集的线性可分离聚类,集群集上的非线性可分离聚类和集群在分区集上群集。提出了一种迭代算法来解决优化问题。所提出的算法可以使用低计算成本来有效地识别非线性可分离的簇。已经研究了该算法的综合和真实数据集的性能。与其他非线性可分离聚类算法的比较说明了所提出的算法的效率和有效性。

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