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simmediumroboticsmetric · varies
Advancing Multi-agent Traffic Simulation via R1-Style Reinforcement Fine-Tuning
Description
Scalable and realistic simulation of multi-agent traffic behavior is critical for advancing autonomous driving technologies. Although existing data-driven simulators have made significant strides in this domain, they predominantly rely on supervised learning to align simulated distributions with real-world driving scenarios. A persistent challenge, however, lies in the distributional shift that arises between training and testing, which often undermines model generalization in unseen environment