基于密度的模糊聚类中离群点识别和高效聚类方法

Prabhjot Kaur
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引用次数: 2

摘要

异常值识别的任务是找到与其他大量数据相比异常的小组数据对象。识别异常值可以在电子商务、信用卡欺诈、投票违规分析、数据清理、网络入侵、恶劣天气预测等领域发现真正意想不到的知识。本文研究了模糊聚类中异常值的识别和高效聚类的问题。本文提出了一种新的基于密度的离群点定义和算法dasiaDFCMpsila;它分两个阶段起作用。在第一阶段,它识别异常值并将其从原始数据集中分离出来,在第二阶段,它从无噪声数据中创建聚类。DFCM修改了FCM模糊聚类技术来创建聚类。但它也可以用任何其他模糊聚类技术实现。数值算例和测试结果表明,该算法与FCM相比具有更好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DFCM: Density Based Approach to Identify Outliers and to Get Efficient Clusters in Fuzzy Clustering
The task of outlier identification is to find small groups of data objects that are exceptional when compared with rest large amount of data. The identification of outliers can lead to the discovery of truly unexpected knowledge in areas such as electronic commerce, credit card frauds, voting irregularity analysis, data cleansing, network intrusion, severe weather prediction & many more. This paper deals with the identification of outliers and to get efficient clusters in fuzzy clustering. In this paper a new density based definition of outlier and an algorithm dasiaDFCMpsila is proposed; which works in two phases. In first phase, it identifies outliers and separate them from original data-set and in the second phase, it creates clusters from noiseless data. DFCM modifies FCM fuzzy clustering technique to create clusters. But it can also be implemented with any other fuzzy clustering technique. Numerical examples and tests show that proposed algorithm gives better result when compared with FCM.
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