PAP
Parametrizing Convex Sets Using Sublinear Neural Networks
May 5, 2026
Abstract
We propose a neural parameterization of convex sets by learning sublinear (positively homogeneous and convex) functions. Our networks implicitly represent both the support and gauge functions of a convex body. We prove a universal approximation theorem for convex sets under this parametrization. Empirically, we demonstrate the method on shape optimization and inverse design tasks, achieving accurate reconstruction of target shapes.
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Authors
Eloi Martinet
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arXiv:2605.03520