AI RESEARCH
SnareNet: Flexible Repair Layers for Neural Networks with Hard Constraints
arXiv CS.AI
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ArXi:2602.09317v2 Announce Type: replace-cross Neural networks are increasingly used as fast surrogate models across various domains, but unconstrained predictions can violate physical, operational, or safety requirements. We propose SnareNet, a feasibility-controlled architecture to learn mappings whose outputs must satisfy input-dependent constraints. SnareNet appends a differentiable repair layer that navigates in the constraint map's range space, steering iterates toward feasibility and producing a repaired output that satisfies constraints to a user-specified tolerance.