KATANA, MOH. LA NYALA and Utami, Alvi Syahrini and Miraswan, Kanda Januar (2021) KLASIFIKASI PENYAKIT JANTUNG MENGGUNAKAN METODE RANDOM FOREST. Undergraduate thesis, Sriwijaya University.
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Abstract
Heart disease has modifiable risk factors. Many people have a heart attack without any prior symptoms. Over the past 50 years, more and more people are getting coronary heart disease, and some of the main causative factors have been identified. Previously, heart disease was predicted to be 30% of the causes of death in humans. WHO estimates that in 2005, deaths caused by heart disease in humans. Therefore, a system was created that can classify human heart disease from symptoms that have similarities. In the field of medicine this intelligent system can help classify human heart disease. This system uses the Random Forest method to classify human heart disease using two classes. The Random Forest method uses a dataset of 303 with a total of 10 parameters. In this study, 2 classes were used, namely the detected class and the healthy class. The performance of Random Forest gives the greatest accuracy is 93.00% and the use of trees with a larger number equal to 100 will give the greatest accuracy value. Keywords : Classification, Random Forest, Accuracy, Human Heart Disease.
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