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A comparison of validity indices on fuzzy C-means clustering algorithm for directional data

机译:方向数据的模糊C-均值聚类算法有效性指标比较

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The FCM4DD fuzzy directional clustering algorithm, a simple, consistent and reliable method, requires the user to predefine the number of clusters. The determination of the number of clusters is very important in an unsupervised clustering algorithm. The number of clusters of directional data can be determined by observing scatter plots which are drawn in a one- or two-dimensional space. However, if the size of the data is large and multi-dimensional, the determination of the number of clusters is very difficult. In this study, the determination of the optimal number of clusters is aided by the parameters which are calculated by the FCM4DD clustering algorithm. The partition coefficient and the partition entropy validity indices use only the fuzzy membership degrees. Therefore, these validity indices do not require any changes in order to be adapted to directional data. However, the Fukuyama-Sugeno, the Xie-Beni and the Pakhira-Bandyopadhyay-Maulik indexes were adapted to directional data by using the angular difference.
机译:FCM4DD模糊方向聚类算法是一种简单,一致且可靠的方法,需要用户预先定义聚类数量。在无监督聚类算法中,聚类数量的确定非常重要。方向数据簇的数量可以通过观察在一维或二维空间中绘制的散点图来确定。但是,如果数据的大小很大且是多维的,则确定簇数非常困难。在这项研究中,通过FCM4DD聚类算法计算出的参数来确定最佳聚类数。分配系数和分配熵有效性指标仅使用模糊隶属度。因此,这些有效性指标不需要任何更改即可适应定向数据。但是,通过使用角度差,将Fukuyama-Sugeno,Xie-Beni和Pakhira-Bandyopadhyay-Maulik索引适用于定向数据。

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