2020
DOI: 10.30699/fhi.v9i1.214
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Combining Random Forest and Neural Networks Algorithms to Diagnose Heart Disease

Abstract: Introduction: Heart disease is known as one of the most important causes of death in today's society and so far no definitive method has been found to predict it and several factors are effective in contracting this disease. Therefore, the aim of this study was to provide a data mining model for predicting heart disease.Material and Methods: This study used standard data from UCI. These data include four Cleveland, Hungarian, Swiss and Long Beach VA databases. These data include 13 independent variables and on… Show more

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