From Black Box to Insight: Explainable AI for Extreme Event Preparedness
Kiana Vu, \.Ismet Sel\c{c}uk \"Ozer, Phung Lai, Zheng Wu, Thilanka Munasinghe, Jennifer Wei

TL;DR
This paper explores how explainable AI techniques, specifically SHAP, can improve trust and decision-making in wildfire prediction models, making them more usable for disaster response and climate resilience planning.
Contribution
It demonstrates the application of XAI methods to wildfire prediction models, improving interpretability and practical usability for decision-makers.
Findings
XAI clarifies model decision pathways and feature importance.
Visualizations enhance interpretability of model outputs.
XAI supports better decision-making in wildfire management.
Abstract
As climate change accelerates the frequency and severity of extreme events such as wildfires, the need for accurate, explainable, and actionable forecasting becomes increasingly urgent. While artificial intelligence (AI) models have shown promise in predicting such events, their adoption in real-world decision-making remains limited due to their black-box nature, which limits trust, explainability, and operational readiness. This paper investigates the role of explainable AI (XAI) in bridging the gap between predictive accuracy and actionable insight for extreme event forecasting. Using wildfire prediction as a case study, we evaluate various AI models and employ SHapley Additive exPlanations (SHAP) to uncover key features, decision pathways, and potential biases in model behavior. Our analysis demonstrates how XAI not only clarifies model reasoning but also supports critical…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Forecasting Techniques and Applications · Computational and Text Analysis Methods
