Pendekatan Data-Centric AI dengan Confident Learning dan XGBoost untuk Prediksi Churn Nasabah
A Data-Centric AI Approach with Confident Learning and XGBoost for Customer Churn Prediction

Date
2023Author
Putra, Indra Syah
Advisor(s)
Sitompul, Opim Salim
Nababan, Erna Budhiarti
Metadata
Show full item recordAbstract
Customer churn prediction is critical for businesses to reduce customer attrition and
improve customer retention strategies. This research proposes a method to enhance the
accuracy and effectiveness of customer churn prediction in the banking industry using
confident learning and XGBoost algorithms. Confident Learning is employed to address
the challenges of uncertain or mislabeled training data, while XGBoost is utilized to
build an efficient prediction model. The dataset used consists of 1,000 customers
from a Regional Bank. The predictive model was tested in six different scenarios, and
by using the confident learning algorithm and XGBoost, a significant accuracy
improvement was achieved, reaching 93.36% on the dataset used.
Collections
- Master Theses [13]