Climate Data Improves Cat Bond Coupon Prediction
Analysis
Key Takeaways
- •Climate data significantly improves the accuracy of machine learning models for predicting catastrophe bond coupons.
- •Extremely randomized trees performed best among the tested machine learning algorithms.
- •The study highlights the importance of considering climate variability in financial risk assessment, particularly for instruments like CAT bonds.
“Including climate-related variables improves predictive accuracy across all models, with extremely randomized trees achieving the lowest root mean squared error (RMSE).”