Physical discovery in representation learning via conditioning on prior knowledge: applications for ferroelectric domain dynamics
Yongtao Liu, Bryan D Huey, Maxim A. Ziatdinov, Sergei V. Kalinin

TL;DR
This paper introduces a conditional variational autoencoder approach to discover physical factors of variability in complex data, improving interpretability and applicability in analyzing ferroelectric domain dynamics.
Contribution
It presents a flexible cVAE method conditioned on known physical parameters, enhancing physical interpretability and enabling limited extrapolation in representation learning.
Findings
cVAE simplifies latent distributions when conditioned on physical parameters
The approach effectively analyzes synthetic and experimental ferroelectric data
Conditional modeling improves disentanglement of physical factors
Abstract
Recent advances in electron, scanning probe, optical, and chemical imaging and spectroscopy yield bespoke data sets containing the information of structure and functionality of complex systems. In many cases, the resulting data sets are underpinned by low-dimensional simple representations encoding the factors of variability within the data. The representation learning methods seek to discover these factors of variability, ideally further connecting them with relevant physical mechanisms. However, generally the task of identifying the latent variables corresponding to actual physical mechanisms is extremely complex. Here, we explore an approach based on conditioning the data on the known (continuous) physical parameters, and systematically compare it with the previously introduced approach based on the invariant variational autoencoders. The conditional variational autoencoders (cVAE)…
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Taxonomy
TopicsNeural Networks and Applications · Model Reduction and Neural Networks · Ultrasonics and Acoustic Wave Propagation
