A neural network is trained to generate symbolic expressions for the governing equations of dynamical systems, with accuracy demonstrated on classical examples.
On mean absolute error for deep neural network based vector-to-vector regression , volume =
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Symbolic Regression via Neural Networks
A neural network is trained to generate symbolic expressions for the governing equations of dynamical systems, with accuracy demonstrated on classical examples.