An unsupervised possibilistic c-means clustering algorithm with data reduction

Yating Hu, Fuheng Qu, Changji Wen
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引用次数: 5

Abstract

Because of using the possibilistic partition to describe the data set, possibilistic clustering algorithm is more robust to noises than hard and fuzzy clustering algorithms. But calculating the membership matrix also makes it has a low efficiency. Moreover, the performance of possibilistic clustering may be degreased if the cluster number is set wrongly. In this paper, we proposed a new possibilistic clustering algorithm named unsupervised possibilistic c-means clustering algorithm with data reduction (UPCMDR) to improve the efficiency of possibilistic c-means clustering algorithm (PCM). In UPCMDR, data reduction technique is introduced to speed up the process of estimation of the cluster centers. A new clustering algorithm called weighted possibilistic c-means clustering algorithm is proposed to estimate the positions of centers of PCM accurately. The contrast experimental results with conventional algorithms show that UPCMDR has a relatively high efficiency, and can execute unsupervised clustering task when combining with the generalized cluster validity index.
一种数据约简的无监督可能性c均值聚类算法
由于使用了可能性划分来描述数据集,因此可能性聚类算法比硬聚类和模糊聚类算法对噪声具有更强的鲁棒性。但是计算隶属矩阵的效率也很低。此外,如果聚类数设置错误,可能会降低可能性聚类的性能。为了提高可能性c-均值聚类算法(PCM)的效率,本文提出了一种新的可能性聚类算法——无监督数据约简可能性c-均值聚类算法(UPCMDR)。在UPCMDR中,引入了数据约简技术来加快聚类中心的估计过程。提出了一种新的聚类算法——加权可能性c均值聚类算法,以准确估计聚类图像的中心位置。与常规算法的对比实验结果表明,UPCMDR算法具有较高的效率,结合广义聚类有效性指标可以执行无监督聚类任务。
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