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Communication Dans Un Congrès Année : 2018

Lyapunov Functions for First-Order Methods: Tight Automated Convergence Guarantees

Résumé

We present a novel way of generating Lyapunov functions for proving linear convergence rates of first-order optimization methods. Our approach provably obtains the fastest linear convergence rate that can be verified by a quadratic Lyapunov function (with given states), and only relies on solving a small-sized semidefinite program. Our approach combines the advantages of performance estimation problems (PEP, due to Drori & Teboulle (2014)) and integral quadratic constraints (IQC, due to Lessard et al. (2016)), and relies on convex interpolation (due to Taylor et al. (2017c;b)).

Dates et versions

hal-01902068 , version 1 (25-10-2018)

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Adrien Taylor, Bryan van Scoy, Laurent Lessard. Lyapunov Functions for First-Order Methods: Tight Automated Convergence Guarantees. Proceedings of the 35th International Conference on Machine Learning. PMLR 80:4897-4906, Jul 2018, Stockholm, Sweden. ⟨hal-01902068⟩
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