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Universal Learning of Nonlinear Dynamics

Published: August 16, 2025 | arXiv ID: 2508.11990v1

By: Evan Dogariu, Anand Brahmbhatt, Elad Hazan

Potential Business Impact:

Learns how things change, even when wobbly.

We study the fundamental problem of learning a marginally stable unknown nonlinear dynamical system. We describe an algorithm for this problem, based on the technique of spectral filtering, which learns a mapping from past observations to the next based on a spectral representation of the system. Using techniques from online convex optimization, we prove vanishing prediction error for any nonlinear dynamical system that has finitely many marginally stable modes, with rates governed by a novel quantitative control-theoretic notion of learnability. The main technical component of our method is a new spectral filtering algorithm for linear dynamical systems, which incorporates past observations and applies to general noisy and marginally stable systems. This significantly generalizes the original spectral filtering algorithm to both asymmetric dynamics as well as incorporating noise correction, and is of independent interest.

Page Count
41 pages

Category
Computer Science:
Machine Learning (CS)