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Feature granularity for cardiac datasets using Rough Set

机译:使用粗糙集的心脏数据集的特征粒度

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摘要

Rough Set is a remarkable technique that has been successfully implemented in diverse applications including medical field. Typically, Rough Set is an efficient instrument in dealing with huge dataset in concert with missing values and granularing the features. However, large numbers of generated features reducts and rules must be chosen cautiously to reduce the processing power in dealing with massive parameters for classification. Hence, the primary objective of this study is to probe the significant reducts and rules prior to classification process of cardiac datasets from National Heart Institute (NHI), Malaysia. All-embracing analyses are presented to eradicate the insignificant attributes, reduct and rules for better classification taxonomy. Reducts with core attributes and minimal cardinality are preferred to construct new decision table, and subsequently generate high classification rates. In addition, rules with highest support, fewer length and high Rule Importance Measure (RIM) are favored since they reveal high quality performance. The results are compared in terms of the classification accuracy between the original decision table and a new decision table. It demonstrates that the rules with highest support value are more significant compared to the rules with less length.
机译:粗糙集是一项非凡的技术,已成功地在包括医学领域在内的各种应用中实施。通常,粗糙集是一种有效的工具,可以与遗漏的值一起对庞大的数据集进行处理并细化特征。但是,必须谨慎选择大量生成的特征约简和规则,以降低处理大量用于分类的参数时的处理能力。因此,这项研究的主要目的是在从马来西亚国家心脏研究所(NHI)进行心脏数据分类之前,先探究明显的减少方法和规则。提出了全方位的分析,以消除无关紧要的属性,归类和规则,以更好地进行分类分类。具有核心属性和最小基数的归约法可用于构建新的决策表,并随后产生较高的分类率。此外,具有最高支持,更短长度和较高规则重要性度量(RIM)的规则也受到青睐,因为它们显示出高质量的性能。将结果根据原始决策表和新决策表之间的分类准确性进行比较。它证明了具有最高支持价值的规则与长度较短的规则相比更为重要。

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