模糊数据聚类的模糊C均值算法及其在不完全数据聚类中的应用

J. Tayyebi, E. Hosseinzadeh
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引用次数: 3

摘要

模糊c-均值聚类算法是一种有用的聚类工具;但它只对清晰完整的数据很方便。本文提出了一种适用于梯形模糊数据聚类的改进算法。线性排序函数用于定义梯形模糊数据的距离。然后,作为一个应用,提出了一种基于该算法的不完全模糊数据聚类方法。该方法用梯形模糊数代替缺失的属性,通过使用q最近邻的相应属性来确定。实验结果的比较和分析证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fuzzy C-means Algorithm for Clustering Fuzzy Data and Its Application in Clustering Incomplete Data
The fuzzy c-means clustering algorithm is a useful tool for clustering; but it is convenient only for crisp complete data. In this article, an enhancement of the algorithm is proposed which is suitable for clustering trapezoidal fuzzy data. A linear ranking function is used to define a distance for trapezoidal fuzzy data. Then, as an application, a method based on the proposed algorithm is presented to cluster incomplete fuzzy data. The method substitutes missing attribute by a trapezoidal fuzzy number to be determined by using the corresponding attribute of q nearest-neighbor. Comparisons and analysis of the experimental results demonstrate the capability of the proposed method.
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