Enactor: From Traffic Simulators to Surrogate World Models
arXiv cs.LG / 3/20/2026
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Key Points
- The paper introduces an actor-centric generative model based on transformers that captures both actor–actor interactions and traffic-intersection geometry to generate physically grounded, long-horizon trajectories.
- It uses the World Model paradigm to learn behavior and geometry, achieving realistic trajectories with fewer training samples than traditional agent-centric approaches.
- In a live simulation-in-the-loop setup, initial actor conditions are generated in SUMO and then controlled by the model for 40,000 timesteps (about 4,000 seconds).
- The evaluation shows the approach outperforms the baseline on traffic-related and aggregate metrics, including more than 10× improvement in KL-divergence.
- By combining physics-aware dynamics with learned behavior, the framework addresses limitations of existing microsimulators and deep-learning models for urban traffic analysis.
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