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A Hybrid Classification System for Heart Disease Diagnosis Based on the RFRS Method

机译:基于RFRS方法的混合型心脏病诊断系统

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摘要

Heart disease is one of the most common diseases in the world. The objective of this study is to aid the diagnosis of heart disease using a hybrid classification system based on the ReliefF and Rough Set (RFRS) method. The proposed system contains two subsystems: the RFRS feature selection system and a classification system with an ensemble classifier. The first system includes three stages: (i) data discretization, (ii) feature extraction using the ReliefF algorithm, and (iii) feature reduction using the heuristic Rough Set reduction algorithm that we developed. In the second system, an ensemble classifier is proposed based on the C4.5 classifier. The Statlog (Heart) dataset, obtained from the UCI database, was used for experiments. A maximum classification accuracy of 92.59% was achieved according to a jackknife cross-validation scheme. The results demonstrate that the performance of the proposed system is superior to the performances of previously reported classification techniques.
机译:心脏病是世界上最常见的疾病之一。这项研究的目的是使用基于ReliefF和Rough Set(RFRS)方法的混合分类系统来帮助诊断心脏病。所提出的系统包含两个子系统:RFRS特征选择系统和具有集成分类器的分类系统。第一个系统包括三个阶段:(i)数据离散化,(ii)使用ReliefF算法进行特征提取,以及(iii)使用我们开发的启发式粗糙集约简算法进行特征约简。在第二个系统中,提出了基于C4.5分类器的集成分类器。从UCI数据库获得的Statlog(心脏)数据集用于实验。根据折刀交叉验证方案,最大分类精度达到92.59%。结果表明,所提出的系统的性能优于先前报道的分类技术。

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