DOE PAGES title logo U.S. Department of Energy
Office of Scientific and Technical Information

Title: On learning what to learn: Heterogeneous observations of dynamics and establishing possibly causal relations among them

Journal Article · · PNAS Nexus

Abstract Before we attempt to (approximately) learn a function between two sets of observables of a physical process, we must first decide what the inputs and outputs of the desired function are going to be. Here we demonstrate two distinct, data-driven ways of first deciding “the right quantities” to relate through such a function, and then proceeding to learn it. This is accomplished by first processing simultaneous heterogeneous data streams (ensembles of time series) from observations of a physical system: records of multiple observation processes of the system. We determine (i) what subsets of observables are common between the observation processes (and therefore observable from each other, relatable through a function); and (ii) what information is unrelated to these common observables, therefore particular to each observation process, and not contributing to the desired function. Any data-driven technique can subsequently be used to learn the input–output relation—from k-nearest neighbors and Geometric Harmonics to Gaussian Processes and Neural Networks. Two particular “twists” of the approach are discussed. The first has to do with the identifiability of particular quantities of interest from the measurements. We now construct mappings from a single set of observations from one process to entire level sets of measurements of the second process, consistent with this single set. The second attempts to relate our framework to a form of causality: if one of the observation processes measures “now,” while the second observation process measures “in the future,” the function to be learned among what is common across observation processes constitutes a dynamical model for the system evolution.

Sponsoring Organization:
USDOE
OSTI ID:
2483365
Journal Information:
PNAS Nexus, Journal Name: PNAS Nexus Journal Issue: 12 Vol. 3; ISSN 2752-6542
Publisher:
Oxford University PressCopyright Statement
Country of Publication:
United States
Language:
English

References (44)

Embedology journal November 1991
On the nature of turbulence journal September 1971
A Common Variable Minimax Theorem for Graphs journal January 2022
Isothermal sustained oscillations in a very simple surface reaction journal April 1981
Takens embedding theorems for forced and stochastic systems journal December 1997
Geometric harmonics: A novel tool for multiscale out-of-sample extension of empirical functions journal July 2006
Non-linear independent component analysis with diffusion maps journal September 2008
Learning the geometry of common latent variables using alternating-diffusion journal May 2018
Latent common manifold learning with alternating diffusion: Analysis and applications journal November 2019
Spatiotemporal analysis using Riemannian composition of diffusion operators journal January 2024
Alternating diffusion maps for multimodal data fusion journal January 2019
DGM: A deep learning algorithm for solving partial differential equations journal December 2018
Manifold learning for parameter reduction journal September 2019
Tackling the curse of dimensionality with physics-informed neural networks journal August 2024
Causation entropy identifies indirect influences, dominance of neighbors and anticipatory couplings journal January 2014
Causality book January 2009
Learning emergent partial differential equations in a learned emergent space journal June 2022
Nonlinear intrinsic variables and state reconstruction in multiscale simulations journal November 2013
Causation and information flow with respect to relative entropy journal July 2018
Manifold learning for organizing unstructured sets of process observations journal April 2020
Transformations establishing equivalence across neural networks: When have two networks learned the same task?
  • Bertalan, Tom; Dietrich, Felix; Kevrekidis, Ioannis G.
  • Chaos: An Interdisciplinary Journal of Nonlinear Science, Vol. 34, Issue 7 https://doi.org/10.1063/5.0206406
journal July 2024
Detecting intrinsic slow variables in stochastic dynamical systems by anisotropic diffusion maps journal August 2009
Empirical intrinsic geometry for nonlinear modeling and time series filtering journal July 2013
Solving high-dimensional partial differential equations using deep learning journal August 2018
Optimal recovery of precision matrix for Mahalanobis distance from high-dimensional noisy observations in manifold learning journal August 2022
Measuring Information Transfer journal July 2000
An Emergent Space for Distributed Data With Hidden Internal Order Through Manifold Learning journal January 2018
Detecting Causality in Complex Ecosystems journal September 2012
Causal Network Inference by Optimal Causation Entropy journal January 2015
Recovering Hidden Components in Multimodal Data with Composite Diffusion Operators journal January 2019
A Geometric Approach to the Transport of Discontinuous Densities journal January 2020
Tensor Decomposition Methods for High-dimensional Hamilton--Jacobi--Bellman Equations journal January 2021
Spectral Discovery of Jointly Smooth Features for Multimodal Data journal March 2022
Deterministic Nonperiodic Flow journal March 1963
Algorithms for overcoming the curse of dimensionality for certain Hamilton–Jacobi equations arising in control theory and elsewhere journal September 2016
Investigating Causal Relations by Econometric Models and Cross-spectral Methods journal August 1969
Differentiable Manifolds journal July 1936
Identifying the Coupling Structure in Complex Systems through the Optimal Causation Entropy Principle journal June 2014
On Geometry of Information Flow for Causal Inference journal March 2020
Adam: A Method for Stochastic Optimization preprint January 2014
An Emergent Space for Distributed Data with Hidden Internal Order through Manifold Learning text January 2017
Spectral Flow on the Manifold of SPD Matrices for Multimodal Data Processing preprint January 2020
On the Correspondence between Gaussian Processes and Geometric Harmonics preprint January 2021
Gappy local conformal auto-encoders for heterogeneous data fusion: in praise of rigidity preprint January 2023