Optimization and Equilibrium Seminar: Bilevel learning for PDE inverse problems
Abstract: In recent years, the integration of optimization techniques with machine learning paradigms has led to significant advances in solving inverse problems, particularly through the optimal selection of parameters or observation strategies. A rigorous and systematic approach to tackle such problems is provided by bilevel optimization, where the lower-level problem corresponds to a model-based inverse problem—often governed by a partial differential equation (PDE)—and the upper-level objective encodes a data-driven loss functional, typically defined over a training set. Unlike classical variational models, the presence of PDE constraints introduces substantial analytical and computational challenges. In this talk, I will present a bilevel optimization framework for PDE-constrained inverse problems, and discuss recent results on the existence of optimal parameters. Furthermore, I will explore the possibility of reformulating the bilevel problem as a single-level optimization problem under suitable assumptions. Finally, I will derive and discuss first-order optimality conditions for the resulting problem, highlighting key mathematical difficulties and future directions.
Speaker: Juan Carlos De Los Reyes (Centro de Modelización Matemática MODEMAT y Escuela Politécnica Nacional, Quito).
The link to join the seminar is:
https://uchile.zoom.us/j/98721784149?pwd=df7YyCDGwMXlNuDX0kwKvob08edgk7.1