TY - JOUR
T1 - Coefficient-to-Basis Network
T2 - A fine-tunable operator learning framework for inverse problems with adaptive discretizations and theoretical guarantees
AU - Zhang, Zecheng
AU - Liu, Hao
AU - Liao, Wenjing
AU - Lin, Guang
N1 - Publisher Copyright:
© 2025 The Author(s).
PY - 2025/9/25
Y1 - 2025/9/25
N2 - We propose a Coefficient-to-Basis Network (C2BNet), a novel framework for solving inverse problems within the operator learning paradigm. C2BNet efficiently adapts to different discretizations through fine-tuning, using a pre-trained model to significantly reduce computational cost while maintaining high accuracy. Unlike traditional approaches that require retraining from scratch for new discretizations, our method enables seamless adaptation without sacrificing predictive performance. Furthermore, we establish theoretical approximation and generalization error bounds for C2BNet by exploiting low-dimensional structures in the underlying datasets. Our analysis demonstrates that C2BNet adapts to low-dimensional structures without relying on explicit encoding mechanisms, highlighting its robustness and efficiency. To validate our theoretical findings, we conducted extensive numerical experiments that showcase the superior performance of C2BNet on several inverse problems. The results confirm that C2BNet effectively balances computational efficiency and accuracy, making it a promising tool to solve inverse problems in scientific computing and engineering applications. This article is part of the theme issue 'Frontiers of applied inverse problems in science and engineering'.
AB - We propose a Coefficient-to-Basis Network (C2BNet), a novel framework for solving inverse problems within the operator learning paradigm. C2BNet efficiently adapts to different discretizations through fine-tuning, using a pre-trained model to significantly reduce computational cost while maintaining high accuracy. Unlike traditional approaches that require retraining from scratch for new discretizations, our method enables seamless adaptation without sacrificing predictive performance. Furthermore, we establish theoretical approximation and generalization error bounds for C2BNet by exploiting low-dimensional structures in the underlying datasets. Our analysis demonstrates that C2BNet adapts to low-dimensional structures without relying on explicit encoding mechanisms, highlighting its robustness and efficiency. To validate our theoretical findings, we conducted extensive numerical experiments that showcase the superior performance of C2BNet on several inverse problems. The results confirm that C2BNet effectively balances computational efficiency and accuracy, making it a promising tool to solve inverse problems in scientific computing and engineering applications. This article is part of the theme issue 'Frontiers of applied inverse problems in science and engineering'.
KW - approximation theory
KW - fine tuning
KW - generalization error
KW - inverse problem
KW - operator learning
UR - https://www.scopus.com/pages/publications/105017101738
U2 - 10.1098/rsta.2024.0054
DO - 10.1098/rsta.2024.0054
M3 - Journal article
C2 - 40994204
AN - SCOPUS:105017101738
SN - 1364-503X
VL - 383
JO - Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences
JF - Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences
IS - 2305
M1 - 20240054
ER -