On the Asymptotic Linear Convergence Speed of Anderson Acceleration, Nesterov Acceleration, and Nonlinear GMRES
Hans De Sterck, Yunhui He

TL;DR
This paper provides a theoretical and numerical analysis of the asymptotic linear convergence rates of Anderson acceleration, Nesterov acceleration, and nonlinear GMRES, demonstrating how these methods improve fixed-point iteration convergence.
Contribution
It quantifies the asymptotic convergence improvement of AA and NGMRES under simplified conditions and relates their performance to GMRES applied to linearized fixed-point problems.
Findings
Optimal coefficients for AA and NGMRES improve convergence factors.
GMRES convergence bounds are relevant for AA and NGMRES near fixed points.
Numerical tests confirm the ability to estimate asymptotic convergence speeds.
Abstract
We consider nonlinear convergence acceleration methods for fixed-point iteration , including Anderson acceleration (AA), nonlinear GMRES (NGMRES), and Nesterov-type acceleration (corresponding to AA with window size one). We focus on fixed-point methods that converge asymptotically linearly with convergence factor and that solve an underlying fully smooth and non-convex optimization problem. It is often observed that AA and NGMRES substantially improve the asymptotic convergence behavior of the fixed-point iteration, but this improvement has not been quantified theoretically. We investigate this problem under simplified conditions. First, we consider stationary versions of AA and NGMRES, and determine coefficients that result in optimal asymptotic convergence factors, given knowledge of the spectrum of at the fixed point . This allows us to…
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Taxonomy
TopicsTensor decomposition and applications · Matrix Theory and Algorithms · Advanced Numerical Methods in Computational Mathematics
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
