心脏病检测——机器学习方法

S. Josephine Reenamary, Rev. Sr. ArockiaValan Rani
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引用次数: 0

摘要

心脏是人体最重要的器官之一。它有助于身体的血液循环,变得更清洁。全球主要的死亡原因是心脏病发作。胸部不适、心跳加快和呼吸问题是一些症状。这些数据的准确性是定期检查的。该出版物对心脏病发作和目前的治疗方法进行了广泛的总结。此外,还提供了文献中可用的用于心脏病发作预测的重要机器学习方法的快速概述。所描述的机器学习技术包括决策树、逻辑回归、支持向量机、朴素贝叶斯、随机森林、KNN和XG Boost分类器。在特征支撑的基础上对算法进行了对比。
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Heart Disease Detection -A Machine Learning Approach
One of the human body's most important organs is the heart. It helps the body's blood to circulate and become cleaner. The global leading cause of death is heart attack. Chest discomfort, a faster heartbeat, and breathing problems were a few indications. The accuracy of this data was regularly checked. This publication presented a broad summary of heart attacks and current treatments. Additionally, a quick overview of the important machine learning methods for heart attack prediction that are available in the literature is provided. The machine learning techniques described include Decision Tree, Logistic Regression, SVM, Naive Bayes, Random Forest, KNN, and XG Boost Classifier. The algorithms are contrasted based on the braced of characteristics.
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