AI RESEARCH
Beyond Lipschitz: Data-Driven Robustness via Discrete Modulus of Continuity
arXiv CS.LG
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ArXi:2605.28729v1 Announce Type: cross Robustness of neural networks is commonly quantified via local or global Lipschitz constants. However, Lipschitz continuity can be overly coarse or overly restrictive as global robustness measure, failing to capture nuanced, data-dependent behavior. We propose a data-driven, architecture-agnostic framework based on the discrete modulus of continuity (DMOC), a non linear generalization of Lipschitz continuity that provides a finer notion of robustness.