ALCo-FM: Adaptive Long-Context Foundation Model for Accident Prediction
ALCo-FM: Adaptive Long-Context Foundation Model for Accident Prediction
Traffic accidents are rare, yet high-impact events that require long-context multimodal reasoning for accurate risk forecasting. In this paper, we introduce ALCo-FM, a unified adaptive long-context foundation model that computes a volatility pre-score to dynamically select context windows for input data and encodes and fuses these multimodal data via shallow cross attention. Following a local GAT layer and a BigBird-style sparse global transformer over H3 hexagonal grids, coupled with Monte Carlo dropout for confidence, the model yields superior, well-calibrated predictions. Trained on data from 15 US cities with a class-weighted loss to counter label imbalance, and fine-tuned with minimal data on held-out cities, ALCo-FM achieves 0.94 accuracy, 0.92 F1, and an ECE of 0.04, outperforming more than 20 state-of-the-art baselines in large-scale urban risk prediction. Code and dataset are available at: https://github.com/PinakiPrasad12/ALCo-FM
Pinaki Prasad Guha Neogi、Ahmad Mohammadshirazi、Rajiv Ramnath
交通运输经济综合运输计算技术、计算机技术
Pinaki Prasad Guha Neogi,Ahmad Mohammadshirazi,Rajiv Ramnath.ALCo-FM: Adaptive Long-Context Foundation Model for Accident Prediction[EB/OL].(2025-07-10)[2025-07-25].https://arxiv.org/abs/2507.08153.点此复制
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