Alternating Implicit Projected SGD and Its Efficient Variants for Equality-constrained Bilevel Optimization

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Publication:6417120

arXiv2211.07096MaRDI QIDQ6417120

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Publication date: 13 November 2022

Abstract: Stochastic bilevel optimization, which captures the inherent nested structure of machine learning problems, is gaining popularity in many recent applications. Existing works on bilevel optimization mostly consider either unconstrained problems or constrained upper-level problems. This paper considers the stochastic bilevel optimization problems with equality constraints both in the upper and lower levels. By leveraging the special structure of the equality constraints problem, the paper first presents an alternating implicit projected SGD approach and establishes the ildecalO(epsilon2) sample complexity that matches the state-of-the-art complexity of ALSET citep{chen2021closing} for unconstrained bilevel problems. To further save the cost of projection, the paper presents two alternating implicit projection-efficient SGD approaches, where one algorithm enjoys the ildecalO(epsilon2/T) upper-level and ildecalO(epsilon1.5/Tfrac34) lower-level projection complexity with calO(T) lower-level batch size, and the other one enjoys ildecalO(epsilon1.5) upper-level and lower-level projection complexity with calO(1) batch size. Application to federated bilevel optimization has been presented to showcase the empirical performance of our algorithms. Our results demonstrate that equality-constrained bilevel optimization with strongly-convex lower-level problems can be solved as efficiently as stochastic single-level optimization problems.




Has companion code repository: https://github.com/hanshen95/aipod








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