Analyzing inexact hypergradients for bilevel learning

Author:

Ehrhardt Matthias J1ORCID,Roberts Lindon2ORCID

Affiliation:

1. Department of Mathematical Sciences, University of Bath , Bath BA2 7AY , UK

2. School of Mathematics and Statistics, University of Sydney , Camperdown, NSW 2006 , Australia

Abstract

Abstract Estimating hyperparameters has been a long-standing problem in machine learning. We consider the case where the task at hand is modeled as the solution to an optimization problem. Here the exact gradient with respect to the hyperparameters cannot be feasibly computed and approximate strategies are required. We introduce a unified framework for computing hypergradients that generalizes existing methods based on the implicit function theorem and automatic differentiation/backpropagation, showing that these two seemingly disparate approaches are actually tightly connected. Our framework is extremely flexible, allowing its subproblems to be solved with any suitable method, to any degree of accuracy. We derive a priori and computable a posteriori error bounds for all our methods and numerically show that our a posteriori bounds are usually more accurate. Our numerical results also show that, surprisingly, for efficient bilevel optimization, the choice of hypergradient algorithm is at least as important as the choice of lower-level solver.

Funder

Engineering and Physical Sciences Research Council

Leverhulme Trust

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics

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