Section 01
Introduction: Practical Strategies for Handling Extremely Imbalanced Data in Customer Churn Prediction Neural Networks
This article focuses on a customer churn prediction neural network project, exploring solutions for extremely imbalanced datasets (churned customers account for only 1.55%), including SMOTE oversampling technology, selection of evaluation metrics such as ROC-AUC and recall rate, and model architecture optimization strategies. It also analyzes the impact of different hyperparameters on performance through multiple experiments, providing practical references for similar business scenarios.