Bridging data science and dynamical systems theory
Statistics Theory
2020-07-01 v3 Dynamical Systems
Data Analysis, Statistics and Probability
Statistics Theory
Abstract
This short review describes mathematical techniques for statistical analysis and prediction in dynamical systems. Two problems are discussed, namely (i) the supervised learning problem of forecasting the time evolution of an observable under potentially incomplete observations at forecast initialization; and (ii) the unsupervised learning problem of identification of observables of the system with a coherent dynamical evolution. We discuss how ideas from from operator-theoretic ergodic theory combined with statistical learning theory provide an effective route to address these problems, leading to methods well-adapted to handle nonlinear dynamics, with convergence guarantees as the amount of training data increases.
Cite
@article{arxiv.2002.07928,
title = {Bridging data science and dynamical systems theory},
author = {Tyrus Berry and Dimitrios Giannakis and John Harlim},
journal= {arXiv preprint arXiv:2002.07928},
year = {2020}
}
Comments
17 pages, 3 figures