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Exploring feature selection and classification methods for predicting heart disease

机译:探索预测心脏病的特征选择和分类方法

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摘要

Machine learning has been used successfully to improve the accuracy of computer-aided diagnosis systems. This paper experimentally assesses the performance of models derived by machine learning techniques by using relevant features chosen by various feature-selection methods. Four commonly used heart disease datasets have been evaluated using principal component analysis, Chi squared testing, ReliefF and symmetrical uncertainty to create distinctive feature sets. Then, a variety of classification algorithms have been used to create models that are then compared to seek the optimal features combinations, to improve the correct prediction of heart conditions. We found the benefits of using feature selection vary depending on the machine learning technique used for the heart datasets we consider. However, the best model we created used a combination of Chi-squared feature selection with the BayesNet algorithm and achieved an accuracy of 85.00% on the considered datasets.
机译:机器学习已成功用于提高计算机辅助诊断系统的准确性。本文通过使用各种特征选择方法选择的相关特征,通过实验评估了机器学习技术衍生的模型的性能。使用主成分分析,卡方检验,ReliefF和对称不确定性对四个常用的心脏病数据集进行了评估,以创建独特的特征集。然后,已使用各种分类算法来创建模型,然后将这些模型进行比较以寻找最佳特征组合,以改善心脏状况的正确预测。我们发现使用特征选择的好处因我们考虑的心脏数据集所使用的机器学习技术而异。但是,我们创建的最佳模型将卡方特征选择与BayesNet算法结合使用,在考虑的数据集上达到了85.00%的精度。

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