有监督机器学习算法在心脏病检测中的比较分析

Hector Daniel Huapaya, Ciro Rodriguez, D. Esenarro
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引用次数: 11

摘要

本文介绍了有监督机器学习(SML)中最突出的算法,它们的特点,以及在处理数据方面的比较。从Kaggle获得的心脏病数据集用于确定和测试其最高准确率。为了实现这一目标,使用Python sklearn库来实现所选择的算法,评估并确定哪种算法是获得最佳结果的算法,应用决策树算法获得最佳预测结果。
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Comparative analysis of supervised machine learning algorithms for heart disease detection
This paper describes the most prominent algorithms of Supervised Machine Learning (SML), their characteristics, and comparatives in the way of treating data. The Heart Disease dataset obtained from Kaggle was used to determine and test its highest percentage of accuracy. To achieve the objective, Python sklearn libraries were used to implement the selected algorithms, evaluate and determine which algorithm is the one that obtains the best results, applying decision tree algorithms achieved the best prediction results.
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