AI RESEARCH
Environment-Adaptive Preference Optimization for Wildfire Prediction
arXiv CS.LG
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ArXi:2605.12435v1 Announce Type: new Predicting rare extreme events such as wildfires from meteorological data requires models that remain reliable under evolving environmental conditions. This problem is inherently long-tailed: wildfire events are rare but high-impact, while most observations correspond to non-fire conditions, causing standard learning objectives to underemphasize the minority class (fire) that matters most. In addition, models trained on historical distributions often fail under distribution shifts, exhibiting degraded performance in new environments.