(Andy Hermawan, Aji Saputra, Muhammad Dhika Rafi, Syafiq Basmallah, Yilmaz Trigumari Syah Putra, Wafa Nabila)
- Volume: 3,
Issue: 2,
Sitasi : 0
Abstrak:
Customer churn is a major challenge in e-commerce, directly affecting revenue and profit. This study aims to develop a machine learning model using XGBoost to predict churn probability. To handle class imbalance, SMOTE was applied as a resampling method, and hyperparameter tuning was performed to enhance performance. The model was evaluated using the F2-score, prioritizing recall while maintaining precision. The results show that the XGBoost model with SMOTE achieves strong performance, with an F2-score of 0.849 on the tuned test data. This model can help businesses identify at-risk customers early, enabling proactive retention strategies.