This paper refines wildfire risk assessment methodologies for the European Central Banks, focusing on the Fire Weather Index, land cover types, and climate data. Using logistic regression and xgboost models, it projects a 12% increase in high-risk areas by 2050, emphasizing advanced models' importance for accurate financial risk evaluation.
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