LGAIDec 22, 2025

Research Program: Theory of Learning in Dynamical Systems

arXiv:2512.19410v12 citationsh-index: 74
Originality Incremental advance
AI Analysis

This foundational work addresses the challenge of learning from time-evolving data for researchers in machine learning and dynamical systems, though it is incremental as it builds on existing prediction theories.

The paper tackles the problem of determining when a dynamical system can be learned from observations alone, proposing a research program that defines learnability based on system properties like stability and mixing, and illustrates it with linear systems where finite observations enable accurate prediction without full identification.

Modern learning systems increasingly interact with data that evolve over time and depend on hidden internal state. We ask a basic question: when is such a dynamical system learnable from observations alone? This paper proposes a research program for understanding learnability in dynamical systems through the lens of next-token prediction. We argue that learnability in dynamical systems should be studied as a finite-sample question, and be based on the properties of the underlying dynamics rather than the statistical properties of the resulting sequence. To this end, we give a formulation of learnability for stochastic processes induced by dynamical systems, focusing on guarantees that hold uniformly at every time step after a finite burn-in period. This leads to a notion of dynamic learnability which captures how the structure of a system, such as stability, mixing, observability, and spectral properties, governs the number of observations required before reliable prediction becomes possible. We illustrate the framework in the case of linear dynamical systems, showing that accurate prediction can be achieved after finite observation without system identification, by leveraging improper methods based on spectral filtering. We survey the relationship between learning in dynamical systems and classical PAC, online, and universal prediction theories, and suggest directions for studying nonlinear and controlled systems.

Foundations

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