Bridging data science and dynamical systems theory

02/18/2020
by   Tyrus Berry, et al.
0

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.

READ FULL TEXT
research
03/13/2023

Leveraging Neural Koopman Operators to Learn Continuous Representations of Dynamical Systems from Scarce Data

Over the last few years, several works have proposed deep learning archi...
research
09/30/2019

Towards Scalable Koopman Operator Learning: Convergence Rates and A Distributed Learning Algorithm

In this paper, we propose an alternating optimization algorithm to the n...
research
11/28/2012

Nature-Inspired Mateheuristic Algorithms: Success and New Challenges

Despite the increasing popularity of metaheuristics, many crucially impo...
research
11/01/2021

Learning to Assimilate in Chaotic Dynamical Systems

The accuracy of simulation-based forecasting in chaotic systems is heavi...
research
08/23/2020

Learning Dynamical Systems with Side Information

We present a mathematical and computational framework for the problem of...
research
08/17/1999

Collective Intelligence for Control of Distributed Dynamical Systems

We consider the El Farol bar problem, also known as the minority game (W...
research
05/25/2023

Koopman Kernel Regression

Many machine learning approaches for decision making, such as reinforcem...

Please sign up or login with your details

Forgot password? Click here to reset