On Learning Closed-Loop Probabilistic Multi-Agent Simulator
Lu, Juanwu, Gupta, Rohit, Moradipari, Ahmadreza, Han, Kyungtae, Zhang, Ruqi, Wang, Ziran
–arXiv.org Artificial Intelligence
-- The rapid iteration of autonomous vehicle (A V) deployments leads to increasing needs for building realistic and scalable multi-agent traffic simulators for efficient evaluation. Recent advances in this area focus on closed-loop simulators that enable generating diverse and interactive scenarios. This paper introduces Neural Interactive Agents (NIV A), a probabilistic framework for multi-agent simulation driven by a hierarchical Bayesian model that enables closed-loop, observation-conditioned simulation through autoregressive sampling from a latent, finite mixture of Gaussian distributions. We demonstrate how NIV A unifies preexisting sequence-to-sequence trajectory prediction models and emerging closed-loop simulation models trained on Next-token Prediction (NTP) from a Bayesian inference perspective. Experiments on the Waymo Open Motion Dataset demonstrate that NIV A attains competitive performance compared to the existing method while providing embellishing control over intentions and driving styles.
arXiv.org Artificial Intelligence
Aug-4-2025