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首页|Sharp Lower Bounds on Interpolation by Deep ReLU Neural Networks at Irregularly Spaced Data

Sharp Lower Bounds on Interpolation by Deep ReLU Neural Networks at Irregularly Spaced Data

Sharp Lower Bounds on Interpolation by Deep ReLU Neural Networks at Irregularly Spaced Data

来源:Arxiv_logoArxiv
英文摘要

We study the interpolation power of deep ReLU neural networks. Specifically, we consider the question of how efficiently, in terms of the number of parameters, deep ReLU networks can interpolate values at $N$ datapoints in the unit ball which are separated by a distance $δ$. We show that $Ω(N)$ parameters are required in the regime where $δ$ is exponentially small in $N$, which gives the sharp result in this regime since $O(N)$ parameters are always sufficient. This also shows that the bit-extraction technique used to prove lower bounds on the VC dimension cannot be applied to irregularly spaced datapoints. Finally, as an application we give a lower bound on the approximation rates that deep ReLU neural networks can achieve for Sobolev spaces at the embedding endpoint.

Jonathan W. Siegel

计算技术、计算机技术

Jonathan W. Siegel.Sharp Lower Bounds on Interpolation by Deep ReLU Neural Networks at Irregularly Spaced Data[EB/OL].(2025-08-25)[2025-09-06].https://arxiv.org/abs/2302.00834.点此复制

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