Download PDFOpen PDF in browserHeart Disease Prediction Using Machine Learning.EasyChair Preprint 94604 pages•Date: December 12, 2022AbstractHeart disease prognosis has become one of the most difficult challenges in the medical sector in recent years. In the modern period, about one person dies from heart disease every minute. In the realm of healthcare, data science is critical for analysing massive amounts of data. Because predicting cardiac illness is a difficult undertaking, it is necessary to automate the process in order to avoid the risks connected with it and to inform the patient well in advance. This research takes use of the kaggal UCI machine learning repository's heart disease dataset. Keyphrases: MultilayerPerceptron(MLP), NaïveBayes(NB), RandomForest, SupportVectorMachine(SVM)
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