Improving Prototypes Representativeness by Internal Validity Index Analysis

Alexandre Szabo, Thomaz A. Ruckl
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Abstract

Internal validity indexes are applied to evaluate the solution of a partition, which no equally reflects the same quality for all clusters, individually, in terms of prototypes representativeness. Thus, knowing their representativeness in respective clusters, it is possible adjust them to increase the confidence in analysis of found clusters. In this sense, this paper proposes a simple and effective method to obtain the internal validity index value in every cluster in a partition, identify those with low prototypes representativeness and improve them. Experiments were carried out by sum of the squared error index, which measures the compactness of clusters. The behavior of the method was illustrated by a synthetic dataset and performed for ten datasets from the literature with k-Means algorithm. The results demonstrated its effectiveness for all experiments.
利用内部效度指标分析提高原型的代表性
内部效度指标用于评估分区的解决方案,它不平等地反映了所有集群的相同质量,单独而言,在原型代表性方面。因此,了解它们在各自集群中的代表性,可以调整它们以增加对发现集群分析的置信度。为此,本文提出了一种简单有效的方法来获取分区中每个聚类的内部有效性指标值,识别原型代表性较低的聚类并对其进行改进。通过测量聚类紧密度的误差平方和进行实验。该方法的行为通过一个合成数据集来说明,并使用k-Means算法对文献中的十个数据集进行了测试。实验结果证明了该方法的有效性。
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