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Optimistic Multi-granulation Rough Set-Based Classification for Neonatal Jaundice Diagnosis

机译:乐观的多粒状粗糙集基于新生儿Jaundice诊断的分类

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摘要

Neonatal jaundice diagnosis has been approached by various machine learning techniques. Pattern recognition algorithms are capable of improving the quality of prediction, early diagnosis of diseases, and disease classification. Pattern recognition algorithm results in Neonatal jaundice diagnosis or description of jaundice treatment by the medical specialist. This research focuses on applying rough set-based data mining techniques for Neonatal jaundice data to discover locally frequent identification of jaundice diseases. This work applies Optimistic Multi-granulation rough set model (OMGRS) for Neonatal jaundice data classification. Multi-granulation rough set provides efficient results than single granulation rough set model and soft rough set-based classifier model. The performance of the proposed Multi-granulation rough set-based classification is compared with other Naive bayes, Back Propagation Neural Networks (BPN), and Kth Nearest Neighbor (KNN) approaches using various classification measures.
机译:各种机器学习技术已经接近了新生儿Jaundice诊断。模式识别算法能够提高预测质量,疾病早期诊断和疾病分类。模式识别算法导致医疗专家对新生儿Jaunice诊断或描述的诊断或描述。本研究侧重于应用基于粗糙集的数据挖掘技术,以发现新生儿JAUNDICE数据,以发现局部频繁地识别黄疸疾病。这项工作适用于新生儿JAundice数据分类的乐观多颗粒粗糙集模型(OMGRS)。多粒状粗糙集提供高于单颗粒粗糙集模型和基于软粗糙集的分类器模型的有效结果。使用各种分类措施将所提出的多粒状粗糙集基于基于多粒状粗糙设定的分类进行比较,反向传播神经网络(BPN)和kth最近邻(Khn)方法进行比较。

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