2021 Annual Meeting
(132c) Learning What to Learn: Some Data-Driven Twists in Linking System Identification, Manifold Learning, and (possibly) Causality Considerations
Authors
Along the same lines, manifold learning is implemented in order to merge
multi-fidelity data, i.e. observations of the same process from models
or measuring devices of varying accuracy. Specifically, the goal is to
implement data-driven methodologies, in this case Alternating Diffusion
maps [1] and autoencoders[2], in order to develop and apply ânonlinear
filteringâ of the low-fidelity observations in an effort to leverage the
availability of heterogeneous data.
We also explore the use of manifold learning techniques for the systematic discovery of useful embedding spaces for disorganized heterogeneous observations: finding the ``right spaceâ -the right independent variables- in which we can learn the effective dynamics as a partial differential equation using machine learning techniques in the form black or gray box models. Some analogies between these tools and the adaptive control dynamics studied by Erik Ydstie will be discussed.
[1] Ronen Talmon, Hau-Tieng Wu, Latent common manifold learning with
alternating diffusion: analysis and applications, arXiv:1602.00078v2
[2] Erez Peterfreund, Ofir Lindenbaum, Felix Dietrich, Tom Bertalan,
Matan Gavish, Ioannis G. Kevrekidis, Ronald R. Coifman, LOCA: LOcal
Conformal Autoencoder for standardized data coordinates,
arXiv:2004.07234