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An Ensemble Machine Learning Method for the Prediction of Heart Disease

机译:一种用于预测心脏病的集合机学习方法

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摘要

Heart disease is a major health issue causing public concern worldwide. Heart disease cases are increasing at a rapid rate every day, so it is very important to predict any such diseases in advance. Therefore, the early diagnosis and prediction of heart disease play a vital role in the correct treatment of patients. In this research article, we have proposed a novel ensemble method using majority voting scheme. First, we compared the performance of different state-of-the-art machine learning classification algorithms for the prediction of heart disease. Six algorithms named as K-nearest neighbor (KNN), Random forest, Naïve bayes, Support vector machine (SVM), XGBoost (XGB) and logistic regression were applied and a comparative study was drawn. Several evaluation techniques were used to evaluate the performance of each algorithm using the Cleveland dataset of the UCI repository of heart patients. We proposed a new ensemble classification model by choosing three algorithms based on the best performance. The proposed ensemble approach yields the highest accuracy, precision, recall and F1 score with 92%, 91.1%, 94%, and 93% respectively on the UCI heart disease dataset. Statistical results demonstrate that the robustness of the ensemble method accurately and reliably distinguishes between heart disease and healthy patients.
机译:心脏病是一个主要的健康问题,导致全世界公众关注。心脏病病例每天都在迅速增加,因此预测任何此类疾病是非常重要的。因此,心脏病的早期诊断和预测在对患者的正确治疗中起着至关重要的作用。在本研究条例中,我们提出了一种使用多数投票方案的新型集合方法。首先,我们比较了不同最先进的机器学习分类算法的性能进行心脏病预测。应用六种名为k最近邻(knn),随机森林,天真贝叶斯,支持向量机(SVM),XGBoost(XGB)和逻辑回归的六种算法,并绘制了比较研究。几种评估技术用于使用心脏患者UCI储存库的克利夫兰数据集来评估每种算法的性能。我们通过选择基于最佳性能的三种算法提出了一种新的集体分类模型。该拟议的合并方法可以分别产生高精度,精度,召回和F1分别,分别在UCI心脏病数据集中分别为92%,91.1%,94%和93%。统计结果表明,集合方法的鲁棒性准确和可靠地区分患者患者。

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