一种改进的粗糙模糊聚类算法

Sahil Sobti, Vivek Shah, B. Tripathy
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引用次数: 3

摘要

聚类是数据挖掘领域中一个熟悉的概念,在图像处理、模式识别和规则生成等领域有着广泛的应用。当前数据库的不确定性是一个共同的特征。为了处理这些数据集,文献中已经制定了几种聚类算法。首先是模糊c均值(Fuzzy C-Means, FCM)算法,其次是粗糙c均值(Rough C-Means, RCM)算法。在论文中,林格拉斯改进了他之前的算法。本文将该算法与模糊c均值算法相结合,生成了一种粗糙模糊c均值(RFCM)算法。此外,我们还与Mitra等人引入的早期RFCM算法进行了比较分析,并证明我们的算法性能更好。我们使用数字和图像数据集作为输入,并为此使用性能指标DB和D。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A refined rough fuzzy clustering algorithm
Clustering is a familiar concept in the realm of Data mining and has wide applications in areas like image processing, pattern recognition and rule generation. Uncertainty in present day databases is a common feature. In order to handle these datasets, several clustering algorithms have been formulated in the literature. The first one being the Fuzzy C-Means (FCM) algorithm and it was followed by the Rough C-Means (RCM) by Lingras. In the paper Lingras has refined his previous algorithm. We combine this algorithm with the fuzzy C-means algorithm to generate a rough fuzzy C-Means (RFCM) algorithm in this paper. Also, we provide a comparative analysis with earlier RFCM algorithm introduced by Mitra et al and establish that our algorithm performs better. We use both numeric as well as image datasets as input and use the performance indices DB and D for this purpose.
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