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Heart Disease Prediction Algorithm Based on Ensemble Learning

机译:基于集合学习的心脏病预测算法

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Nowadays, heart disease is one of the important causes of human deaths. According to statistics, deaths caused by heart disease account for about one-third of all deaths in the world. With further research, the use of machine learning to predict heart disease has become an essential method to prevent and treat heart disease. In recent years, machine learning based on big data analysis has been widely used in various software applications, but it has not been used on a large scale in disease prediction. In this article, we propose a new algorithm named hybrid gradient boosting decision tree with logistic regression (HGBDTLR) based on ensemble learning to improve the accuracy of machine learning in heart disease prediction. The actual results prove that the prediction accuracy of HGBDTLR algorithm can reach 91.8% in the Cleveland heart disease data set.
机译:如今,心脏病是人类死亡的重要原因之一。据统计,心脏病造成的死亡占世界所有死亡人数的约三分之一。通过进一步研究,使用机器学习预测心脏病已成为预防和治疗心脏病的基本方法。近年来,基于大数据分析的机器学习已广泛用于各种软件应用中,但它尚未在疾病预测中使用大规模使用。在本文中,我们提出了一种具有基于集合学习的逻辑回归(HGBDTLR)的混合渐变升压决策树的新算法,以提高心脏病预测机器学习的准确性。实际结果证明了HGBDTLR算法的预测准确性在克利夫兰心脏病数据集中可以达到91.8%。

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