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An New Algorithm-based Rough Set for Selecting Clustering Attribute in Categorical Data

机译:基于新算法的粗糙集聚类属性选择

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Several algorithms strategies based on Rough Set Theory (RST) have been used for the selection of attributes and grouping objects that show similar features. On the other hand, most of these clustering techniques cannot deal tackle partitioning. In addition, these processes are computationally complexity and low purity. In this study, the researcher looked at the limitations of the two rough set based techniques used, Information-Theoretic Dependency Roughness (ITDR) and Maximum Indiscernible Attribute (MIA). They also proposed a novel method for selecting clustering attributes, Maximum mean Attribute (MMA). They compared the performance of MMA, ITDR and MIA technique, using UCI and benchmark datasets. Their results validated the performance of the MMA with regards to its purity and computational complexity.
机译:基于粗糙集理论(RST)的几种算法策略已用于选择具有相似特征的属性和对对象进行分组。另一方面,这些聚类技术中的大多数不能处理铲刀分区。另外,这些过程在计算上复杂且纯度低。在这项研究中,研究人员研究了所使用的两种基于粗糙集的技术的局限性:信息理论相关性粗糙度(ITDR)和最大不可分辨属性(MIA)。他们还提出了一种选择聚类属性的新方法,即最大均值属性(MMA)。他们使用UCI和基准数据集比较了MMA,ITDR和MIA技术的性能。他们的结果验证了MMA在纯度和计算复杂性方面的性能。

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