English

Let data talk: data-regularized operator learning theory for inverse problems

Numerical Analysis 2024-03-22 v2 Numerical Analysis

Abstract

Regularization plays a pivotal role in integrating prior information into inverse problems. While many deep learning methods have been proposed to solve inverse problems, determining where to apply regularization remains a crucial consideration. Typical methods regularize neural networks via architecture, wherein neural network functions parametrize the parameter of interest or the regularization term. We introduce a novel approach, denoted as the "data-regularized operator learning" (DaROL) method, designed to address PDE inverse problems. The DaROL method trains a neural network on data, regularized through common techniques such as Tikhonov variational methods and Bayesian inference. The DaROL method offers flexibility across different frameworks, faster inverse problem-solving, and a simpler structure that separates regularization and neural network training. We demonstrate that training a neural network on the regularized data is equivalent to supervised learning for a regularized inverse map. Furthermore, we provide sufficient conditions for the smoothness of such a regularized inverse map and estimate the learning error in terms of neural network size and the number of training samples.

Keywords

Cite

@article{arxiv.2310.09854,
  title  = {Let data talk: data-regularized operator learning theory for inverse problems},
  author = {Ke Chen and Chunmei Wang and Haizhao Yang},
  journal= {arXiv preprint arXiv:2310.09854},
  year   = {2024}
}

Comments

Theorem 2 is updated