Non-Stationary Functional Bilevel Optimization
Bohne, Jason, Petrulionyte, Ieva, Arbel, Michael, Mairal, Julien, Polak, Paweł
Functional bilevel optimization (FBO) provides a powerful framework for hierarchical learning in function spaces, yet current methods are limited to static offline settings and perform suboptimally in online, non-stationary scenarios. We propose SmoothFBO, the first algorithm for non-stationary FBO with both theoretical guarantees and practical scalability. SmoothFBO introduces a time-smoothed stochastic hypergradient estimator that reduces variance through a window parameter, enabling stable outer-loop updates with sublinear regret. Importantly, the classical parametric bilevel case is a special reduction of our framework, making SmoothFBO a natural extension to online, non-stationary settings. Empirically, SmoothFBO consistently outperforms existing FBO methods in non-stationary hyperparameter optimization and model-based reinforcement learning, demonstrating its practical effectiveness. Together, these results establish SmoothFBO as a general, theoretically grounded, and practically viable foundation for bilevel optimization in online, non-stationary scenarios.
Jan-23-2026
- Country:
- Europe > France
- Auvergne-Rhône-Alpes > Isère > Grenoble (0.04)
- North America > United States
- New York > Suffolk County > Stony Brook (0.04)
- Europe > France
- Genre:
- Research Report (1.00)
- Technology: