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Fuzzy Clustering Ensemble with Selection of Number of Clusters

机译:模糊聚类集群选择群数量

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—Existing clustering ensemble algorithms for partitioning data need to know the generating process of clustering members clearly and most of them are not suitable to categorical data. In order to partition categorical data conveniently, at same time broaden the application of clustering ensemble, a fuzzy clustering ensemble algorithm was proposed in this paper, which not only can be used to classify categorical data, but also be used to combine results of multi clustering for numerical data or mixed categorical and numerical data. The proposed algorithm firstly made use of relationship degree between different attributes to prune part of attributes. Next, took the distribution of clustering members into account, Descartes subset and relationship degree between any two different objects were used for establishing the relationships between objects, which were under unsupervised circumstances and could get the minimum value of objective function of clustering and obtain corresponding optimal partitions. Then, choose the number of clusters satisfying the difference and differential rate of objective function local maximum as the optimal number of clusters and its corresponding partitions are optimal clustering. Finally, the proposed algorithm was applied in Synthesis dataset, Fellow-Small dataset, Zoo dataset, and results show the algorithm is effective and feasible.
机译:- 用于分区数据的群集集群集群算法需要清楚地知道群集成员的生成过程,其中大多数不适合分类数据。为了方便地分隔分类数据,同时扩大群集集群集群集群集群,在本文中提出了一种模糊群集集合算法,这不仅可以用于对分类数据进行分类,而且用于组合多聚类的结果用于数值数据或混合分类和数值数据。所提出的算法首先利用不同属性之间的关系程度来修剪属性的部分。接下来,考虑到聚类成员的分发,任何两个不同对象之间的缺陷子集和关系程度用于建立在无监督环境下的对象之间的关系,并可以获得聚类目标函数的最小值,并获得相应的最佳函数分区。然后,选择满足目标函数局部最大值的差异和差分速率的群集数量,作为最佳群集,其相应的分区是最佳聚类。最后,在综合数据集中应用了所提出的算法,同伴 - 小型数据集,动物园数据集和结果表明该算法是有效和可行的。

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