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Optimal Approximation of Zonoids and Uniform Approximation by Shallow Neural Networks

Abstract

We study the following two related problems. The first is to determine to what error an arbitrary zonoid in Rd+1\mathbb{R}^{d+1} can be approximated in the Hausdorff distance by a sum of nn line segments. The second is to determine optimal approximation rates in the uniform norm for shallow ReLUk^k neural networks on their variation spaces. The first of these problems has been solved for d2,3d\neq 2,3, but when d=2,3d=2,3 a logarithmic gap between the best upper and lower bounds remains. We close this gap, which completes the solution in all dimensions. For the second problem, our techniques significantly improve upon existing approximation rates when k1k\geq 1, and enable uniform approximation of both the target function and its derivatives.

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@article{siegel2025_2307.15285,
  title={ Optimal Approximation of Zonoids and Uniform Approximation by Shallow Neural Networks },
  author={ Jonathan W. Siegel },
  journal={arXiv preprint arXiv:2307.15285},
  year={ 2025 }
}
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