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An enhanced cluster validity index method comprising Rough Set theory and modified PBMF index function

机译:一种增强的集群有效性索引方法,包括粗糙集理论和修改的PBMF索引函数

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This study proposes a method for partitioning and classifying complex datasets based on the Rough Set (RS) theory and a modified form of the PBMF-index method. In contrast to the traditional PBMF-index method, the proposed approach, designated as the Huang-index method, partitions the attributes rather than the data and optimizes both the number of clusters and classification accuracy. Overall, the results show that the Huang-index method not only has a better clustering performance than the PBMF-index method, but also achieves a greater classification accuracy, and therefore provides a more reliable basis for the extraction of decision-making rules.
机译:本研究提出了一种基于粗糙集(RS)理论和PBMF索引方法的修改形式进行分区和分类复杂数据集的方法。与传统的PBMF索引方法相比,所提出的方法被指定为Huang-Indem方法,分区属性而不是数据,并优化群集数量和分类准确性。总体而言,结果表明,黄指数方法不仅具有比PBMF索引方法更好的聚类性能,还实现了更大的分类准确性,因此为提取决策规则提供更可靠的基础。

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