A comparative study of validity indices on estimating the optimal number of clusters

Aikaterini Karanikola, C. M. Liapis, S. Kotsiantis
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引用次数: 1

Abstract

In clustering, finding the optimal number of clusters is usually one of the most crucial steps in the whole partitioning process. The decision about the optimal number of clusters, however, is not easy to make. In addition, the term ”optimal” is rather vague. In general, determining the optimal number of clusters is directly dependent on the method used to measure similarities and the parameter selection of the partition method. Moreover, certain inherent characteristics of the datasets, such as clusters that overlap with each other or clusters that contain subclusters, may, most often, increase the task’s level of difficulty. Given the above, in order to tackle the problem of estimating such an optimal in each distinct clustering case, different kind of indicators have over the years been proposed. In this study, a large number of such indicators, called validity indices, based on the approach of the so-called relative criteria, are examined comparatively. Specifically, a total of 26 validity indices are examined in two separate study cases: one in real-world and one in artificially generated data. Every index is utilized under the schemes of 9 different clustering methods which incorporate a total of 5 different distance metrics. The results are presented in various explanatory forms.
最优聚类数估计的效度指标比较研究
在聚类中,找到最优簇数通常是整个分区过程中最关键的步骤之一。然而,要决定集群的最佳数量并不容易。此外,“最优”一词相当模糊。通常,最优聚类数的确定直接依赖于度量相似度的方法和划分方法的参数选择。此外,数据集的某些固有特征,例如相互重叠的集群或包含子集群的集群,通常会增加任务的难度。综上所述,为了解决在每个不同的聚类情况下估计这种最优的问题,多年来提出了不同类型的指标。在本研究中,大量这样的指标,称为效度指标,基于所谓的相对标准的方法,比较检验。具体来说,共有26个有效性指标在两个独立的研究案例中进行了检验:一个在现实世界中,一个在人工生成的数据中。每个指标在9种不同的聚类方法下使用,这些聚类方法包含5种不同的距离度量。结果以各种解释形式提出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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