Novel and Efficient Hybrid Model for Classification of Heart Disease

Mittal Desai, Atul Patel
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引用次数: 0

Abstract

To propose an efficient heart disease classification algorithm to predict disease in early stage so that rate of death can be reduced. A hybrid intelligent model of Genetic Algorithm (GA) and Support Vector Machine (SVM) was developed for the study and Cleveland dataset from UCI machine learning library is used for the prediction. The prediction for coronary ailment was done using SVM and GA by optimizing hyper parameters of SVM: ‘C’ and ‘gamma’. The performance of heart disease classification is efficiently enhanced by implementing meta-heuristics and achieved 91% accuracy compare to SVM without GA. An approach of optimizing SVM parameters using GA outperforms SVM and SVM with k-cross validation for prediction heart diseases in terms of accuracy. It opens a direction to improve efficiency of machine learning algorithms.
一种新型高效的心脏病分类混合模型
提出一种有效的心脏病分类算法,对疾病进行早期预测,降低死亡率。利用UCI机器学习库中的Cleveland数据集进行预测,建立了遗传算法(GA)和支持向量机(SVM)的混合智能模型。通过优化支持向量机的超参数“C”和“gamma”,应用支持向量机和遗传算法对冠心病进行预测。与未加遗传算法的支持向量机相比,采用元启发式算法有效地提高了心脏病分类的性能,准确率达到91%。基于遗传算法的支持向量机参数优化方法在预测心脏病准确率上优于支持向量机和支持向量机的k交叉验证方法。为提高机器学习算法的效率开辟了一个方向。
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