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A Possibilistic c-means Clustering Model with Cluster Size Estimation

机译:具有聚类大小估计的可能c均值聚类模型

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Most c-means clustering models have serious difficulties when facing clusters of different sizes and severely outlier data. The possibilistic c-means (PCM) algorithm can handle both problems to some extent. However, its recommended initialization using a terminal partition produced by the probabilistic fuzzy c-means does not work when severe outliers are present. This paper proposes a possibilistic c-means clustering model that uses only two parameters independently of the number of clusters, which is able to correctly handle the above mentioned obstacles. Numerical evaluation involving synthetic and standard test data sets prove the advantages of the proposed clustering model.
机译:当面对不同大小的聚类和严重离群的数据时,大多数c均值聚类模型存在严重的困难。可能性c均值(PCM)算法可以在一定程度上处理这两个问题。但是,当存在严重异常值时,建议的使用概率模糊c均值产生的终端分区进行初始化的建议不起作用。本文提出了一种可能的c均值聚类模型,该模型仅使用两个参数,而与聚类的数量无关,从而能够正确处理上述障碍。涉及综合和标准测试数据集的数值评估证明了所提出的聚类模型的优势。

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