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Main Authors: Guo, Qing, Li, Xinhang, Chen, Junyu, Guo, Zheng, Xu, Shengzhe, Zhang, Lin, Li, Lei
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.05663
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author Guo, Qing
Li, Xinhang
Chen, Junyu
Guo, Zheng
Xu, Shengzhe
Zhang, Lin
Li, Lei
author_facet Guo, Qing
Li, Xinhang
Chen, Junyu
Guo, Zheng
Xu, Shengzhe
Zhang, Lin
Li, Lei
contents Traffic signal control (TSC) is a core component of intelligent transportation systems (ITS), aiming to reduce congestion, emissions, and travel time. Recent approaches based on reinforcement learning (RL) and large language models (LLMs) have improved adaptivity, but still suffer from limited interpretability, insufficient interaction data, and weak generalization to heterogeneous intersections. This paper proposes CuraLight, an LLM-centered framework where an RL agent assists the fine-tuning of an LLM-based traffic signal controller. The RL agent explores traffic environments and generates high-quality interaction trajectories, which are converted into prompt-response pairs for imitation fine-tuning. A multi-LLM ensemble deliberation system further evaluates candidate signal timing actions through structured debate, providing preference-aware supervision signals for training. Experiments conducted in SUMO across heterogeneous real-world networks from Jinan, Hangzhou, and Yizhuang demonstrate that CuraLight consistently outperforms state-of-the-art baselines, reducing average travel time by 5.34 percent, average queue length by 5.14 percent, and average waiting time by 7.02 percent. The results highlight the effectiveness of combining RL-assisted exploration with deliberation-based data curation for scalable and interpretable traffic signal control.
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id arxiv_https___arxiv_org_abs_2604_05663
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle CuraLight: Debate-Guided Data Curation for LLM-Centered Traffic Signal Control
Guo, Qing
Li, Xinhang
Chen, Junyu
Guo, Zheng
Xu, Shengzhe
Zhang, Lin
Li, Lei
Artificial Intelligence
Traffic signal control (TSC) is a core component of intelligent transportation systems (ITS), aiming to reduce congestion, emissions, and travel time. Recent approaches based on reinforcement learning (RL) and large language models (LLMs) have improved adaptivity, but still suffer from limited interpretability, insufficient interaction data, and weak generalization to heterogeneous intersections. This paper proposes CuraLight, an LLM-centered framework where an RL agent assists the fine-tuning of an LLM-based traffic signal controller. The RL agent explores traffic environments and generates high-quality interaction trajectories, which are converted into prompt-response pairs for imitation fine-tuning. A multi-LLM ensemble deliberation system further evaluates candidate signal timing actions through structured debate, providing preference-aware supervision signals for training. Experiments conducted in SUMO across heterogeneous real-world networks from Jinan, Hangzhou, and Yizhuang demonstrate that CuraLight consistently outperforms state-of-the-art baselines, reducing average travel time by 5.34 percent, average queue length by 5.14 percent, and average waiting time by 7.02 percent. The results highlight the effectiveness of combining RL-assisted exploration with deliberation-based data curation for scalable and interpretable traffic signal control.
title CuraLight: Debate-Guided Data Curation for LLM-Centered Traffic Signal Control
topic Artificial Intelligence
url https://arxiv.org/abs/2604.05663