Section 01
PhoenixProject: Guide to the Practical Machine Learning Solution for E-commerce Fraud Detection
PhoenixProject is a practical machine learning project focused on e-commerce transaction fraud detection. By optimizing the AUC-ROC metric, it achieves high-precision identification of fraudulent transactions, aiming to address the increasingly complex real-world challenges of e-commerce fraud and provide practical technical references for the financial risk control field. The project targets core difficulties in fraud detection such as class imbalance and dynamic evolution of patterns, combining machine learning technology stacks and feature engineering strategies while balancing model performance and actual deployment requirements.