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Bibliographic Details
Main Authors: Ma, Zihui, Chen, Yiheng, Yu, Runlong, Kamili, Afra Izzati, Chen, Fangqi, Zhang, Zhaoxi, Li, Juan, Miura, Yuki
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.14352
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Table of Contents:
  • Social media platforms provide a real-time lens into public sentiment during natural disasters; however, models built solely on textual data often reinforce urban-centric biases and overlook underrepresented communities. This paper introduces an adaptive cross-city learning framework that enhances disaster sentiment understanding by integrating mobility-informed behavioral signals and city similarity-based data augmentation. Focusing on the January 2025 Southern California wildfires, our model achieves state-of-the-art performance and reveals geographically diverse sentiment patterns, particularly in areas experiencing overlapping fire exposure or delayed emergency responses. We further identify positive correlations between emotional expressions and real-world mobility shifts, underscoring the value of combining behavioral and textual features. Through extensive experiments, we demonstrate that multimodal fusion and city-aware training significantly improve both accuracy and fairness. Collectively, these findings highlight the importance of context-sensitive sentiment modeling and provide actionable insights toward developing more inclusive and equitable disaster response systems.