Discretization-Invariant Operator Learning: Algorithms and Theory

Date: 
Wednesday, 26 April, 2023 - 10:00 - 11:00
Seminar Type: 
Applied Math and Numerical Analysis Seminar
Speaker Name: 
Prof. Haizhao YANG
Affiliation: 
University of Maryland
Abstract: 

Learning operators between infinitely dimensional spaces is an important learning task arising in wide applications in machine learning, data science, mathematical modeling and simulations, etc. This talk introduces a new discretization-invariant operator learning approach based on data-driven kernels for sparsity via deep learning. Compared to existing methods, our approach achieves attractive accuracy in solving forward and inverse problems, prediction problems, and signal processing problems with zero-shot generalization, i.e., networks trained with a fixed data structure can be applied to heterogeneous data structures without expensive re-training. Under mild conditions, quantitative generalization error will be provided to understand discretization-invariant operator learning in the sense of non-parametric estimation.

Zoom link: https://cuhk.zoom.us/j/9792985952
Meeting ID: 9792985952

Passcode: 202266