Collocation approximation by deep neural ReLU networks for parametric elliptic PDEs with lognormal inputs
Abstract
We obtained convergence rates of the collocation approximation by deep ReLU neural networks of solutions to elliptic PDEs with lognormal inputs, parametrized by y from the non-compact set R∞. The approximation error is measured in the norm of the Bochner space L2(R∞, V, γ), where γ is the infinite tensor product standard Gaussian probability measure on R∞ and V is the energy space. We also obtained similar results for the case when the lognormal inputs are parametrized on RM with very large dimension M, and the approximation error is measured in the gM-weighted uniform norm of the Bochner space L∞g(RM, V), where gM is the density function of the standard Gaussian probability measure on RM.
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