The Department of Applied Mathematics weekly seminar is given by scholars and researchers working in applied mathematics, broadly interpreted.
Title: Operator learning meets inverse problems
Abstract: Operator learning involves data-driven models that accept continuum function data as inputs or outputs. Such models are robust to refinement of numerical discretizations and are thus well-suited for solving problems in computational mathematics. This talk showcases recent efforts to bring operator learning ideas to the field of inverse problems. The focus is on end-to-end learning of inverse problem solution operators: directly mapping noisy measurements to unknown parameter fields. However, instability with respect to perturbations of the measurements is a fundamental barrier to successful estimation. Focusing on electrical impedance tomography (EIT) as a case study, a theoretical analysis delivers universal approximation guarantees in the presence of noisy boundary measurements. The talk shows that popular and practical neural operator architectures and EIT setups satisfy the required theoretical assumptions. Numerical evidence supports these results with high quality reconstructions.
Bio: Nicholas Nelsen is a Klarman Fellow in the Department of Mathematics at Cornell University. In the fall of 2026, he will join The University of Texas at Austin as an Assistant Professor. Nelsen’s research centers on computational mathematics, machine learning, inverse problems, and uncertainty quantification. His fundamental work is motivated by applications in the physical, engineering, and data sciences. From 2024 to 2025, he was an NSF Postdoctoral Research Fellow in the Department of Mathematics at MIT. Nelsen earned his Ph.D. from Caltech in 2024, where his doctoral dissertation on operator learning was awarded the W. P. Carey & Co. Prize in Applied Mathematics and the Centennial Prize for the Best Thesis in MCE. His work was recognized with a SIGEST award from the Society for Industrial and Applied Mathematics in 2024.