2024
DOI: 10.58291/ijec.v3i1.147
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SMOTE Variants and Random Forest Method: A Comprehensive Approach to Breast Cancer Classification

Baiq Candra Herawati,
Hairani Hairani,
Juvinal Ximenes Guterres

Abstract: This research focused on using machine learning methods for breast cancer diagnosis, considering that breast cancer is the scariest disease for women because it can cause mortality. Not only that, but there is also an increase in breast cancer death rates in women yearly.  Early prediction is the right solution to increase life expectancy and reduce mortality rates caused by breast cancer. However, breast cancer data has a problem, namely that the data is imbalanced, which harms the performance of the machine … Show more

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