Sobolev-Type Embeddings for Neural Network Approximation Spaces
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Grohs, Philipp
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Univ Vienna, Fac Math, Oskar Morgenstern Pl 1, A-1090 Vienna, Austria
Uni Vienna, Res Network Data Sci, Wahringer Str 29-S6, A-1090 Vienna, Austria
Johann Radon Inst, Altenberger Str 69, A-4040 Linz, AustriaUniv Vienna, Fac Math, Oskar Morgenstern Pl 1, A-1090 Vienna, Austria
Grohs, Philipp
[1
,2
,3
]
Voigtlaender, Felix
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Univ Vienna, Fac Math, Oskar Morgenstern Pl 1, A-1090 Vienna, Austria
Tech Univ Munich, Dept Math, Boltzmannstr 3, D-85748 Garching, GermanyUniv Vienna, Fac Math, Oskar Morgenstern Pl 1, A-1090 Vienna, Austria
Voigtlaender, Felix
[1
,4
]
机构:
[1] Univ Vienna, Fac Math, Oskar Morgenstern Pl 1, A-1090 Vienna, Austria
[2] Uni Vienna, Res Network Data Sci, Wahringer Str 29-S6, A-1090 Vienna, Austria
[3] Johann Radon Inst, Altenberger Str 69, A-4040 Linz, Austria
We consider neural network approximation spaces that classify functions according to the rate at which they can be approximated (with error measured in L-P) by ReLU neural networks with an increasing number of coefficients, subject to bounds on the magnitude of the coefficients and the number of hidden layers. We prove embedding theorems between these spaces for different values of P. Furthermore, we derive sharp embeddings of these approximation spaces into Holder spaces. We find that, analogous to the case of classical function spaces (such as Sobolev spaces, or Besov spaces) it is possible to trade "smoothness" (i.e., approximation rate) for increased integrability. Combined with our earlier results in Grohs and Voigtlaender (Proof of the theory-to-practice gap in deep learning via sampling complexity bounds for neural network approximation spaces, 2021. arXiv preprint arXiv:2104.02746), our embedding theorems imply a somewhat surprising fact related to "learning" functions from a given neural network space based on point samples: if accuracy is measured with respect to the uniform norm, then an optimal "learning" algorithm for reconstructing functions that are well approximable by ReLU neural networks is simply given by piecewise constant interpolation on a tensor product grid.
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页码:579 / 599
页数:21
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