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Explicit stabilised gradient descent for faster strongly convex optimisation
Journal article   Open access

Explicit stabilised gradient descent for faster strongly convex optimisation

Armin Eftekhari, Bart Vandereycken, Gilles Vilmart and Konstantinos C. Zygalakis
BIT Numerical Mathematics
2021

Abstract

Runge–Kutta methods Strongly convex optimization Accelerated gradient descent
This paper introduces the Runge–Kutta Chebyshev descent method (RKCD) for strongly convex optimisation problems. This new algorithm is based on explicit stabilised integrators for stiff differential equations, a powerful class of numerical schemes that avoid the severe step size restriction faced by standard explicit integrators. For optimising quadratic and strongly convex functions, this paper proves that RKCD nearly achieves the optimal convergence rate of the conjugate gradient algorithm, and the suboptimality of RKCD diminishes as the condition number of the quadratic function worsens. It is established that this optimal rate is obtained also for a partitioned variant of RKCD applied to perturbations of quadratic functions. In addition, numerical experiments on general strongly convex problems show that RKCD outperforms Nesterov’s accelerated gradient descent. © 2020, The Author(s).
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https://doi.org/10.1007/s10543-020-00819-yView
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