Enhanched uncertainty quantification variational autoencoders for the solution of Bayesian inverse problems
Code:
11/2025
Title:
Enhanched uncertainty quantification variational autoencoders for the solution of Bayesian inverse problems
Date:
Wednesday 19th February 2025
Author(s):
Tonini, A.; Dede', L.
Abstract:
Among other uses, neural networks are a powerful tool for solving deterministic and Bayesian inverse problems in
real-time. In the Bayesian framework, variational autoencoders, a specialized type of neural network, enable the estimation of model
parameters and their distribution based on observational data allowing to perform real-time inverse uncertainty quantification. In this
work, we build upon existing research [Goh, H. et al., Proceedings of Machine Learning Research, 2022] by proposing a novel loss
function to train variational autoencoders for Bayesian inverse problems. When the forward map is affine, we provide a theoretical
proof of the convergence of the latent states of variational autoencoders to the posterior distribution of the model parameters. We
validate this theoretical result through numerical tests and we compare the proposed variational autoencoder with the existing one in the literature. Finally, we test the proposed variational autoencoder on the Laplace equation.