2000 character limit reached
Learning nonparametric ordinary differential equations from noisy data (2206.15215v3)
Published 30 Jun 2022 in stat.ML and cs.LG
Abstract: Learning nonparametric systems of Ordinary Differential Equations (ODEs) dot x = f(t,x) from noisy data is an emerging machine learning topic. We use the well-developed theory of Reproducing Kernel Hilbert Spaces (RKHS) to define candidates for f for which the solution of the ODE exists and is unique. Learning f consists of solving a constrained optimization problem in an RKHS. We propose a penalty method that iteratively uses the Representer theorem and Euler approximations to provide a numerical solution. We prove a generalization bound for the L2 distance between x and its estimator and provide experimental comparisons with the state-of-the-art.
- Kamel Lahouel (7 papers)
- Michael Wells (3 papers)
- Victor Rielly (4 papers)
- Ethan Lew (4 papers)
- David Lovitz (3 papers)
- Bruno M. Jedynak (5 papers)