AminRezaeeyan/Telco-Customer-Churn-Prediction
Customer churn prediction using LightGBM, featuring extensive EDA and feature engineering. The project includes ensemble techniques with LightGBM, model evaluation, and visualizations such as ROC AUC, confusion matrix, and performance metrics.
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MIT
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Jan 30, 2025
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