AI RESEARCH

Certified Neural Approximations of Nonlinear Dynamics

arXiv CS.LG

ArXi:2505.15497v3 Announce Type: replace Neural networks hold great potential to act as approximate models of nonlinear dynamical systems, with the resulting neural approximations enabling verification and control of such systems. However, in safety-critical contexts, the use of neural approximations requires formal bounds on their closeness to the underlying system. To address this fundamental challenge, we propose a novel, adaptive, and parallelizable verification method based on certified first-order models.