用集成学习预测心力衰竭

D. Vora, Sashikala Mishra, Anindita Mukherjee, Shivanshi Tiwari, Sudhanshu Thakur, Swanil Biswas
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引用次数: 0

摘要

心血管疾病正在成为当今世界日益严重的问题。奥尔道斯骤停会导致严重的疾病,如脑损伤、神经系统紊乱,甚至死亡。这使得心力衰竭障碍在早期阶段就可以预测,而不是在后期后悔[8]。一种基于机器学习的决策支持系统可以帮助医生有效地诊断心脏病患者。然而,这些疾病可以使用各种机器学习模型来预测。性能评估使用逻辑回归,k近邻方法,随机森林和人工神经网络。随机森林算法的准确率为83.15%。这比前面描述的其他算法要准确得多。提出的集成学习用于改进可以在单个数据集上同时使用更多分类算法的地方。该模型的准确率为86.41%。提出的模型有助于预测患有各种并发症的各种人的心脏病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heart Failure Prediction with Ensembled Learning
Cardiovascular disease is becoming an increasingly problematic world today. Sudden arrest of Aldous can lead to serious illnesses such as brain damage, nervous system disorders and even death. This makes heart failure disorder to be predicted on an early stage rather than repenting later[8]. A proposed decision support system based on machine learning helps physicians efficiently diagnose patients with heart disease. However, these diseases can be predicted using various machine learning models. Performance is evaluated using logistic regression, K-nearest neighbor method, random forest, and ANN. The accuracy of the random forest algorithm is 83.15%. This was far more accurate than the other algorithms described earlier. The proposed Ensemble learning is used to improve where more classification algorithms can be used simultaneously on a single dataset. The accuracy of the proposed model is 86.41 %. The proposed model helps in predicting the heart disease of various people with various complications.
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