Be greedy and learn: efficient and certified algorithms for parametrized optimal control problems
DOI10.1051/M2AN/2024074MaRDI QIDQ6667327
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Publication date: 20 January 2025
Published in: European Series in Applied and Industrial Mathematics (ESAIM): Mathematical Modelling and Numerical Analysis (Search for Journal in Brave)
error estimationgreedy algorithmkernel methodsmachine learningdeep neural networksparametrized optimal control
Artificial neural networks and deep learning (68T07) General nonlinear regression (62J02) Linear-quadratic optimal control problems (49N10) Hilbert spaces with reproducing kernels (= (proper) functional Hilbert spaces, including de Branges-Rovnyak and other structured spaces) (46E22)
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