AI RESEARCH

Universal Approximation Constraints of Narrow ResNets: The Tunnel Effect

arXiv CS.LG

ArXi:2603.28591v1 Announce Type: cross We analyze the universal approximation constraints of narrow Residual Neural Networks (ResNets) both theoretically and numerically. For deep neural networks without input space augmentation, a central constraint is the inability to represent critical points of the input-output map. We prove that this has global consequences for target function approximations and show that the manifestation of this defect is typically a shift of the critical point to infinity, which we call the ``tunnel effect'' in the context of classification tasks.