AI RESEARCH

Hierarchical End-to-End Taylor Bounds for Complete Neural Network Verification

arXiv CS.LG

ArXi:2605.10621v1 Announce Type: new Reachability analysis of neural networks, which seeks to compute or bound the set of outputs attainable over a given input domain, is central to certifying safety and robustness in learning-enabled physical systems. Since exact reachable set computation is generally intractable, existing methods typically rely on tractable overapproximations. Examining the state of the art for smooth, twice-differentiable networks, we observe that existing approaches exploit at most second-order information and do not systematically leverage higher-order information.