Heart failure prediction based on random forest algorithm using genetic algorithm for feature selectio

Yudi Ramdhani, Cakra Mahendra Putra, D. Alamsyah
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引用次数: 1

Abstract

A disorder or illness called heart failure results in the heart becoming weak or damaged. In order to avoid heart failure early on, it is crucial to understand the causes of heart failure. Based on validation, two experimental processing steps will be applied to the dataset of clinical records related to heart failure. Testing will be done in the first step utilizing six different classification algorithms, including K-nearest neighbor, neural network, random forest, decision tree, Naïve Bayes, and support vector machine (SVM). Cross-validation was employed to conduct the test. According to the results, the random forest algorithm performed better than the other five algorithms in tests employing the algorithm. Subsequent testing uses an algorithm with the best accuracy value, which will then be tested again using split validation with varying split ratios and genetic algorithms as a selection feature. The value generated from testing using the genetic algorithm selection feature is better than the random forest algorithm alone, which is recorded to produce an accuracy value of 93.36% in predicting the survival of heart failure patients.
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基于随机森林的心衰预测算法,采用遗传算法进行特征选择
一种叫做心力衰竭的紊乱或疾病会导致心脏变得虚弱或受损。为了尽早避免心力衰竭,了解心力衰竭的原因是至关重要的。在验证的基础上,将两个实验处理步骤应用于心力衰竭相关临床记录数据集。第一步将使用六种不同的分类算法进行测试,包括k -最近邻、神经网络、随机森林、决策树、Naïve贝叶斯和支持向量机(SVM)。采用交叉验证法进行检验。结果表明,随机森林算法在使用该算法的测试中表现优于其他五种算法。随后的测试使用具有最佳精度值的算法,然后将使用具有不同分割比率和遗传算法作为选择特征的分割验证再次进行测试。使用遗传算法选择特征进行测试产生的值优于单独使用随机森林算法,记录其预测心力衰竭患者生存的准确率值为93.36%。
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