无监督聚类技术中一种新的聚类间验证方法

R. Krishnamoorthy, S. S. Kumar
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引用次数: 6

摘要

本文提出了一种新的集群验证技术——集群间验证(ICV)。所提出的技术旨在测量在无监督聚类技术的结果聚类中每个单个聚类与其他聚类的聚类间相似性和聚类间不相似性。所提出的ICV技术包括两个度量,即簇间相似性(ICS)和簇间不相似性(ICD)。第一个度量(ICS)旨在度量每个单独的集群与结果集群中的其他集群之间的集群间相似性,并且还计算总体结果集群相似性。第二个度量(ICD)是评估每个个体与结果聚类中其他聚类的聚类间不相似性。在K-Means、CURE、OAC和LIAC四种无监督聚类技术的聚类结果上对所提出的ICV技术进行了测试。实验结果表明,ICV技术简单,更适合于对K-Means、CURE、OAC和LIAC等无监督聚类技术得到的聚类结果中每个单独的聚类进行聚类间相似性和聚类间差异性的评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new inter cluster validation method for unsupervised clustering techniques
In this paper, a new cluster validation technique called Inter Cluster Validation (ICV) is presented. The proposed technique is aimed to measure the inter cluster similarity and inter cluster dissimilarity over the each individual cluster with other clusters in the resulting cluster of the unsupervised clustering techniques. The proposed ICV technique consists of two measures which are Inter Cluster Similarity (ICS) and Inter Cluster Dissimilarity (ICD). The first measure (ICS), is aimed to measure the inter cluster similarity over the each individual cluster with other cluster in resulting cluster and, it also calculate the overall resulting cluster similarity. The second measure (ICD), is evaluate the inter cluster dissimilarity over the each individual with other clusters in the resulting cluster. The proposed ICV technique is test over the resulting cluster of the four unsupervised clustering techniques are K-Means, CURE, OAC and LIAC. Experimental results show that the ICV technique is simple and better suitable for evaluating the inter cluster similarity and inter cluster dissimilarity over the each individual cluster belongs to the resulting cluster of the unsupervised clustering techniques such as K-Means, CURE, OAC and LIAC.
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