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A Method to Determine the Number of Clusters Based on Multi-validity Index

机译:基于多效索引确定群集数量的方法

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Cluster analysis is a method of unsupervised learning technology which is playing a more and more important role in data mining. However, one basic and difficult question for clustering is how to gain the number of clusters automatically. The traditional solution for the problem is to introduce a single validity index which may lead to failure because the index is bias to some specific condition. On the other hand, most of the existing clustering algorithms are based on hard partitioning which can not reflect the uncertainty of the data in the clustering process. To combat these drawbacks, this paper proposes a method to determine the number of clusters automatically based on three-way decision and multi-validity index which includes three parts: (1) the k-means clustering algorithm is devised to obtain the three-way clustering results; (2) multi-validity indexes are employed to evaluate the results and each evaluated result is weighed according to the mean similarity between the corresponding clustering result and the others based on the idea of the median partition in clustering ensemble; and (3) the comprehensive evaluation results are sorted and the best ranked k value is selected as the optional number of clusters. The experimental results show that the proposed method is better than the single evaluation method used in the fusion at determining the number of clusters automatically.
机译:集群分析是一种无监督学习技术的方法,在数据挖掘中发挥了越来越重要的作用。但是,群集的一个基本和困难的问题是如何自动获得群集数量。对于问题的传统解决方案是引入单个有效性索引,这可能导致失败,因为索引对某些特定条件偏差。另一方面,大多数现有的聚类算法基于硬划分,其无法反映聚类过程中数据的不确定性。为了解决这些缺点,本文提出了一种基于三向决策和多效性索引来自动确定群集数量的方法,该方法包括三个部分:(1)k-means聚类算法被设计为获得三向聚类结果; (2)采用多效性索引来评估结果,并根据相应的聚类结果与其他结果基于集群集群中的中位分区的思想来称越每个评估结果; (3)对综合评估结果进行排序,并选择最佳排名的k值作为可选数量的群集。实验结果表明,该方法优于融合中使用的单一评估方法,在确定群集的群体时。

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