AI RESEARCH

Data-Driven Reachability Analysis via Diffusion Models with PAC Guarantees

arXiv CS.LG

ArXi:2604.00283v1 Announce Type: cross We present a data-driven framework for reachability analysis of nonlinear dynamical systems that requires no explicit model. A denoising diffusion probabilistic model learns the time-evolving state distribution of a dynamical system from trajectory data alone. The predicted reachable set takes the form of a sublevel set of a nonconformity score derived from the reconstruction error, with the threshold calibrated via the Learn Then Test procedure so that the probability of excluding a reachable state is bounded with high probability.