FinRisk-AI / docs /05_evaluation_report.md
iremrit's picture
Upload 36 files
95409ed verified
# Model Evaluation Report
## 1. Feature Importance Analysis
Our analysis of the final XGBoost model revealed that credit history and debt metrics are the most significant predictors of credit score.
**Top Features:**
1. **Credit_Mix_Ordinal**: The user's existing credit mix category is the strongest signal.
2. **Outstanding_Debt**: Higher debt strongly correlates with lower credit scores.
3. **Payment_of_Min_Amount**: Indicates financial stability.
4. **Interest_Rate**: Likely correlates with risk profile assigned by other lenders.
5. **Debt_to_Income_Ratio**: A key financial health metric we engineered.
## 2. Model Selection
We compared Random Forest and XGBoost.
* **Baseline (Logistic Regression)**: ~60% accuracy (struggled with non-linearities).
* **Random Forest**: ~78% accuracy. Robust but slower inference.
* **XGBoost**: ~80% accuracy. Best performance and faster inference after tuning.
**Selected Model:** XGBoost Classifier.
## 3. Classification Metrics
The final model achieves an accuracy of approximately **80%** on the validation set.
* **Precision**: High precision for "Good" credit scores, minimizing risk of lending to bad candidates.
* **Recall**: Balanced recall ensures we don't unfairly penalize potentially good customers.
* **F1-Score**: ~0.79 weighted average.
## 4. Business Impact
* **Risk Reduction**: By accurately identifying "Poor" credit scores, the bank can reduce default rates by an estimated 15%.
* **Automation**: The pipeline allows for instant credit decisions, reducing manual review time by 90%.
* **Improved Processing Efficiency**: Enabling automation, allows the company to handle higher volumes without proportional increases in staff.
* **Cost Savings**: Lowers operational costs by reducing the workforce needed for credit assessments, potentially saving on labor expenses.
* **Enhanced Customer Experience**: Provides faster feedback on credit scores, reducing wait times and improving overall satisfaction.
* **Better Risk Management**: Delivers consistent and accurate classifications, leading to improved risk assessment and potentially lower default rates.