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Error analysis for deep neural network approximations of parametric hyperbolic conservation laws

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arxiv 2207.07362 v1 pith:X2NWUL7V submitted 2022-07-15 math.NA cs.LGcs.NA

Error analysis for deep neural network approximations of parametric hyperbolic conservation laws

classification math.NA cs.LGcs.NA
keywords errorneuralapproximationconservationhyperboliclawsnetworknetworks
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We derive rigorous bounds on the error resulting from the approximation of the solution of parametric hyperbolic scalar conservation laws with ReLU neural networks. We show that the approximation error can be made as small as desired with ReLU neural networks that overcome the curse of dimensionality. In addition, we provide an explicit upper bound on the generalization error in terms of the training error, number of training samples and the neural network size. The theoretical results are illustrated by numerical experiments.

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