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An improved fuzzy clustering method using modified Fukuyama-Sugeno cluster validity index

机译:一种改进的模糊聚类方法,使用修改型福山-UUGENO集群有效性指数

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The objective of clustering algorithms is to group similar patterns in one class and dissimilar patterns in disjoint classes. This article proposes a novel algorithm for fuzzy partitional clustering with an aim to minimize a composite objective function, defined using the Fukuyama-Sugeno cluster validity index. The optimization of this objective function tries to minimize the separation between clusters of a data set and maximize the compactness of a certain cluster. But in certain cases, such as a data set having overlapping clusters, this approach leads to poor clustering results. Thus we introduce a new parameter in the objective function which enables us to yield more accurate clustering results. The algorithm has been validated with some artificial and real world datasets.
机译:聚类算法的目的是将一个类中的类似模式分组在不相交的类中的不同模式。本文提出了一种新颖的模糊分区聚类算法,其目的是最小化使用福山-UGGENO集群有效性指数定义的复合物目标函数。该目标函数的优化尝试最小化数据集的集群之间的分离,并最大化特定簇的紧凑性。但在某些情况下,例如具有重叠群集的数据集,这种方法导致聚类结果不佳。因此,我们在客观函数中引入了一个新参数,使我们能够产生更准确的聚类结果。该算法已被一些人工和真实世界数据集验证。

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