LGCDCOMP-PHNov 7, 2023

Generative learning for nonlinear dynamics

arXiv:2311.04128v154 citationsh-index: 4
Originality Synthesis-oriented
AI Analysis

It provides a perspective for researchers in machine learning and nonlinear dynamics, but it is incremental as it reviews and links existing concepts without new results.

The paper connects classical nonlinear dynamics concepts, like attractor reconstruction and symbolic approximations, to modern generative machine learning, suggesting that future ML techniques may revisit classical dynamics ideas such as transinformation decay.

Modern generative machine learning models demonstrate surprising ability to create realistic outputs far beyond their training data, such as photorealistic artwork, accurate protein structures, or conversational text. These successes suggest that generative models learn to effectively parametrize and sample arbitrarily complex distributions. Beginning half a century ago, foundational works in nonlinear dynamics used tools from information theory to infer properties of chaotic attractors from time series, motivating the development of algorithms for parametrizing chaos in real datasets. In this perspective, we aim to connect these classical works to emerging themes in large-scale generative statistical learning. We first consider classical attractor reconstruction, which mirrors constraints on latent representations learned by state space models of time series. We next revisit early efforts to use symbolic approximations to compare minimal discrete generators underlying complex processes, a problem relevant to modern efforts to distill and interpret black-box statistical models. Emerging interdisciplinary works bridge nonlinear dynamics and learning theory, such as operator-theoretic methods for complex fluid flows, or detection of broken detailed balance in biological datasets. We anticipate that future machine learning techniques may revisit other classical concepts from nonlinear dynamics, such as transinformation decay and complexity-entropy tradeoffs.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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