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Learning Operators through Coefficient Mappings in Fixed Basis Spaces

Published: October 11, 2025 | arXiv ID: 2510.10350v1

By: Chuqi Chen, Yang Xiang, Weihong Zhang

Potential Business Impact:

Teaches computers to solve math problems faster.

Business Areas:
A/B Testing Data and Analytics

Operator learning has emerged as a powerful paradigm for approximating solution operators of partial differential equations (PDEs) and other functional mappings. \textcolor{red}{}{Classical approaches} typically adopt a pointwise-to-pointwise framework, where input functions are sampled at prescribed locations and mapped directly to solution values. We propose the Fixed-Basis Coefficient to Coefficient Operator Network (FB-C2CNet), which learns operators in the coefficient space induced by prescribed basis functions. In this framework, the input function is projected onto a fixed set of basis functions (e.g., random features or finite element bases), and the neural operator predicts the coefficients of the solution function in the same or another basis. By decoupling basis selection from network training, FB-C2CNet reduces training complexity, enables systematic analysis of how basis choice affects approximation accuracy, and clarifies what properties of coefficient spaces (such as effective rank and coefficient variations) are critical for generalization. Numerical experiments on Darcy flow, Poisson equations in regular, complex, and high-dimensional domains, and elasticity problems demonstrate that FB-C2CNet achieves high accuracy and computational efficiency, showing its strong potential for practical operator learning tasks.

Country of Origin
πŸ‡ΊπŸ‡Έ πŸ‡­πŸ‡° Hong Kong, United States

Page Count
29 pages

Category
Mathematics:
Numerical Analysis (Math)