Data to Equation, Symbolic Regression with Neural ODEs

Abstract

Neural networks have the ability to serve as universal function approximators, but they are not interpretable and don’t generalize well outside of their training region. Both of these issues are problematic when trying to apply standard neural ordinary differential equations (neural ODEs) to dynamical systems. We introduce the polynomial neural ODE, which is a deep polynomial neural network inside of the neural ODE framework. We demonstrate the capability of polynomial neural ODEs to predict outside of the training region, as well as perform direct symbolic regression without additional tools such as SINDy.

Date
Aug 25, 2022
Location
Universität Bonn
HIM lecture hall, Bonn, Germany,

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Colby Fronk
Colby Fronk
AI4Science PhD Student

My research interests include multidisciplinary scientific computing and AI4Science.