Home /Research /Online Bayesian Learning of Agent Behavior in Differential Games
OTHER

Online Bayesian Learning of Agent Behavior in Differential Games

Francesco Bianchin, Robert Lefringhausen, Sandra Hirche

Year
2026
Access
Open access

Abstract

This work introduces an online Bayesian game-theoretic method for behavior identification in multi-agent dynamical systems. By casting Hamilton-Jacobi-Bellman optimality conditions as linear-in-parameter residuals, the method enables fast sequential Bayesian updates, uncertainty-aware inference, and robust prediction from limited, noisy data-without history stacks. The approach accommodates nonlinear dynamics and nonquadratic value functions through basis expansions, providing flexible models. Experiments, including linear-quadratic and nonlinear shared-control scenarios, demonstrate accurate prediction with quantified uncertainty, highlighting the method's relevance for adaptive interaction and real-time decision making.

Keywords

eess.SY

Related papers

Browse all OTHER papers