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Physics-informed Variational Autoencoders for Improved Robustness to Environmental Factors of Variation

Machine-mediated learning (ML), 2022
Abstract

The combination of machine learning models with physical models is a recent research path to learn robust data representations. In this paper, we introduce p3^3VAE, a variational autoencoder that integrates prior physical knowledge about the latent factors of variation that are related to the data acquisition conditions. p3^3VAE combines standard neural network layers with non-trainable physics layers in order to partially ground the latent space to physical variables. We introduce a semi-supervised learning algorithm that strikes a balance between the machine learning part and the physics part. Experiments on simulated and real data sets demonstrate the benefits of our framework against competing physics-informed and conventional machine learning models, in terms of extrapolation capabilities and interpretability. In particular, we show that p3^3VAE naturally has interesting disentanglement capabilities. Our code and data have been made publicly available atthis https URL.

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