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Abstract:
The classical theory of adaptive finite element methods is tailored to stationary PDEs. Recent developments made it possible to prove optimality results also for
simple time-dependent PDEs like the heat equation, and also non-linear ODEs. These methods and ideas can be used to design and train neural networks, that have an almost optimal
number of parameters to reach a certain approximation error. The talk will give an overview over the approach, present key steps in the proofs, and show numerical examples.
Barbara Verfürth, Herbert Koch, Johannes Alt