AI RESEARCH
KANs need curvature: penalties for compositional smoothness
arXiv CS.LG
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ArXi:2605.02190v1 Announce Type: new Kolmogoro-Arnold networks (KANs) offer a potent combination of accuracy and interpretability, thanks to their compositions of learnable univariate activation functions. However, the activations of well-fitting KANs tend to exhibit pathologically high-curvature oscillations, making them difficult to interpret, and standard regularization penalties do not prevent this. Here we derive a basis-agnostic curvature penalty and show that penalized models can maintain accuracy while achieving substantially smoother activations.