System Identification Through Lipschitz Regularized Deep Neural Networks
Elisa Negrini,
Giovanna Citti,
Luca Capogna
Abstract:In this paper we use neural networks to learn governing equations from data. Specifically we reconstruct the right-hand side of a system of ODEs ẋ(t) = f (t, x(t)) directly from observed uniformly time-sampled data using a neural network. In contrast with other neural network based approaches to this problem, we add a Lipschitz regularization term to our loss function. In the synthetic examples we observed empirically that this regularization results in a smoother approximating function and better generalizati… Show more
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