An Innovative Method for Predicting and Classifying Inadequate Accuracy in Heart Disease by Using Decision Tree with K-Nearest Neighbors Algorithm

M. Rajesh, Dr. K. Malathi
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引用次数: 1

Abstract

Aim: Predicting the Heartdiseases using medical parameters of cardiac patients to get a good accuracy rate using machine learning methods like innovative Decision Tree (DT) algorithm. Materials and Methods: Supervised Machine learning Techniques with innovative Decision Tree (N = 20) and K Nearest Neighbour (KNN) (N = 20) are performed with five different datasets at each time to record five samples. Results: The Decision Tree is used to predict heart disease with the help of various medical conditions, the accuracy is achieved for DT is 98% and KNN is 72.2%. The two algorithms Decision Tree and KNN are statistically insignificant (=.737) with the independent sample T-Test value (p<0.005) with a confidence level of 95%. Conclusion: Prediction and classification of heart disease significantly seem to be better in DT than KNN.
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一种基于k近邻决策树的心脏病预测与分类方法
目的:利用创新的决策树(DT)算法等机器学习方法,利用心脏病患者的医学参数进行心脏病预测,获得较好的准确率。材料和方法:利用创新的决策树(N = 20)和K近邻(KNN) (N = 20)对5个不同的数据集进行监督机器学习技术,每次记录5个样本。结果:将决策树用于各种医疗条件下的心脏病预测,DT的准确率为98%,KNN的准确率为72.2%。决策树和KNN两种算法的独立样本t检验值(p<0.005),置信度为95%,统计学上不显著(= 0.737)。结论:DT组对心脏病的预测和分类明显优于KNN组。
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Alinteri Journal of Agriculture Sciences
Alinteri Journal of Agriculture Sciences AGRICULTURE, MULTIDISCIPLINARY-
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