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Relational Duals of Cluster-Validity Functions for the $c$ -Means Family

机译:$ c $ -Means族的簇有效性函数的关系对偶

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摘要

Clustering aims to identify groups of similar objects. To evaluate the results of cluster algorithms, an investigator uses cluster-validity indices. While the theory of cluster validity is well established for vector object data, little effort has been made to extend it to relationship-based data. As such, this paper proposes a theory of reformulation for object-data validity indices so that they can be used to rank the results produced by the relational $c$-means clustering algorithms. More specifically, we create a class of relational validity indices, which is called dual-relational indices, that are guaranteed under certain, but easily met, constraints to produce the same results and, hence, the same cluster counts, as their object-data counterparts.
机译:聚类旨在识别相似对象的组。为了评估聚类算法的结果,研究人员使用聚类有效性指数。尽管对于矢量对象数据已经很好地建立了聚类有效性理论,但几乎没有做出任何努力将其扩展到基于关系的数据。因此,本文提出了一种重新定义对象数据有效性指标的理论,以便可以将它们用于对关系$ c $ -means聚类算法产生的结果进行排名。更具体地说,我们创建了一类关系有效性指数,称为双重关系指数,它在一定但容易满足的约束下得到保证,以产生与对象数据相同的结果,因此具有相同的簇数。同行。

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