AIJul 7, 2025

Application and Evaluation of Large Language Models for Forecasting the Impact of Traffic Incidents

arXiv:2507.04803v1
Originality Incremental advance
AI Analysis

This provides a viable alternative for traffic management systems, though it is incremental as it applies existing LLMs to a new domain.

This study investigated using large language models (LLMs) to forecast traffic incident impacts, finding that the best-performing LLM matched the accuracy of state-of-the-art machine learning models without task-specific training.

This study examines the feasibility of applying large language models (LLMs) for forecasting the impact of traffic incidents on the traffic flow. The use of LLMs for this task has several advantages over existing machine learning-based solutions such as not requiring a large training dataset and the ability to utilize free-text incident logs. We propose a fully LLM-based solution that predicts the incident impact using a combination of traffic features and LLM-extracted incident features. A key ingredient of this solution is an effective method of selecting examples for the LLM's in-context learning. We evaluate the performance of three advanced LLMs and two state-of-the-art machine learning models on a real traffic incident dataset. The results show that the best-performing LLM matches the accuracy of the most accurate machine learning model, despite the former not having been trained on this prediction task. The findings indicate that LLMs are a practically viable option for traffic incident impact prediction.

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