Functional Bilevel Optimization for Machine Learning - Laboratoire Jean Kuntzmann
Communication Dans Un Congrès Année : 2024

Functional Bilevel Optimization for Machine Learning

Résumé

In this paper, we introduce a new functional point of view on bilevel optimization problems for machine learning, where the inner objective is minimized over a function space. These types of problems are most often solved by using methods developed in the parametric setting, where the inner objective is strongly convex with respect to the parameters of the prediction function. The functional point of view does not rely on this assumption and notably allows using over-parameterized neural networks as the inner prediction function. We propose scalable and efficient algorithms for the functional bilevel optimization problem and illustrate the benefits of our approach on instrumental regression and reinforcement learning tasks.

Preprint. Under review.

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hal-04847182 , version 1 (18-12-2024)

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  • HAL Id : hal-04847182 , version 1

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Ieva Petrulionyte, Julien Mairal, Michael Arbel. Functional Bilevel Optimization for Machine Learning. NeurIPS 2024 - Thirty-Eighth Annual Conference on Neural Information Processing Systems, Dec 2024, Vancouver, Canada. ⟨hal-04847182⟩
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