Algorithms for bilevel optimization often encounter Hessian computations, which are prohibitive in high dimensions. While recent works offer first-order methods for unconstrained bilevel problems, the constrained setting remains relatively underexplored. We present first-order linearly constrained optimization methods with finite-time hypergradient stationarity guarantees. For linear equality constraints, we attain -stationarity in gradient oracle calls, which is nearly-optimal. For linear inequality constraints, we attain -Goldstein stationarity in gradient oracle calls, where is the upper-level dimension. Finally, we obtain for the linear inequality setting dimension-free rates of oracle complexity under the additional assumption of oracle access to the optimal dual variable. Along the way, we develop new nonsmooth nonconvex optimization methods with inexact oracles. We verify these guarantees with preliminary numerical experiments.
View on arXiv@article{kornowski2025_2406.12771, title={ First-Order Methods for Linearly Constrained Bilevel Optimization }, author={ Guy Kornowski and Swati Padmanabhan and Kai Wang and Zhe Zhang and Suvrit Sra }, journal={arXiv preprint arXiv:2406.12771}, year={ 2025 } }