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Predicting heart disease using hybrid machine learning model

G Renugadevi, G Asha Priya, B Dhivyaa Sankari, R. Gowthamani

2021Journal of Physics Conference Series15 citationsDOIOpen Access PDF

Abstract

Abstract Multiple Chronic disease are available especially Heart disease is the foremost reasons of death in modern world. Machine learning (ML) is useful for making conclusions and predictions based on a huge volume of data formed by the healthcare industry. The proposed approach uses machine learning techniques to find heart disease in this study. The prediction model, which employs classification techniques, is based on the Cleveland heart dataset. The Random Forest and Decision Tree machine learning techniques are used. This model for heart ailment with hybrid methodology has an accuracy level of 88.7%, according to experimental study. The boundary is determined as an input parameter from the user to predict heart disease using a Decision Tree method and Random Forest hybrid methodology.

Topics & Concepts

Machine learningDecision treeRandom forestHeart diseaseComputer scienceArtificial intelligenceTree (set theory)Boundary (topology)MedicineMathematicsCardiologyMathematical analysisSmart Systems and Machine LearningInternet of Things and AIArtificial Intelligence in Healthcare
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