多原型引导模糊聚类

Shenglan Ben, Zhong Jin, Jing-yu Yang
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引用次数: 9

摘要

本文提出了一种基于多原型聚类表示的模糊聚类算法,用于发现任意形状和大小的聚类。提出了簇内不一致性和簇间重叠作为两个错误度量来指导算法的分裂和合并步骤。在拆分步骤中,迭代地拆分具有最大集群内部不一致性的集群,这样产生的子集群只包含来自同一类的数据。在接下来的合并步骤中,迭代合并具有最大簇间重叠的子簇,直到获得预先确定的簇数。在合并步骤中,采用多原型聚类表示来处理不同大小和形状的聚类。在合成数据集和真实数据集上的实验结果表明了该算法的有效性和鲁棒性。
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Guided fuzzy clustering with multi-prototypes
A new fuzzy clustering algorithm using multi-prototype representation of clusters is proposed in this paper to discover clusters with arbitrary shapes and sizes. Intra-cluster non-consistency and inter-cluster overlap are proposed as two mistake measurements to guide the splitting and merging step of the algorithm. In the splitting step, clusters with the largest intra-cluster non-consistency are iteratively split such that the resulting subclusters only contain data from the same class. In the following merging step, subclusters with the largest inter-cluster overlap are iteratively merged until a pre-determined cluster number is achieved. A multi-prototy-pe representation of clusters is used in the merging step to handle the clusters with different size and shapes. Experimental results on synthetic and real datasets demonstrate the effectiveness and robustness of the proposed algorithm.
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