OCLGNAJul 6, 2020

On the Asymptotic Linear Convergence Speed of Anderson Acceleration Applied to ADMM

arXiv:2007.02916v34 citations
Originality Incremental advance
AI Analysis

This work addresses a theoretical gap for researchers in optimization, offering insights into convergence improvements, though it is incremental as it focuses on a specialized case.

The paper tackles the lack of theoretical quantification for how Anderson acceleration improves the asymptotic linear convergence speed of ADMM, providing analytical results and numerical validation for a stationary version of AA applied to ADMM.

Empirical results show that Anderson acceleration (AA) can be a powerful mechanism to improve the asymptotic linear convergence speed of the Alternating Direction Method of Multipliers (ADMM) when ADMM by itself converges linearly. However, theoretical results to quantify this improvement do not exist yet. In this paper we explain and quantify this improvement in linear asymptotic convergence speed for the special case of a stationary version of AA applied to ADMM. We do so by considering the spectral properties of the Jacobians of ADMM and the stationary version of AA evaluated at the fixed point, where the coefficients of the stationary AA method are computed such that its asymptotic linear convergence factor is optimal. The optimal linear convergence factors of this stationary AA-ADMM method are computed analytically or by optimization, based on previous work on optimal stationary AA acceleration. Using this spectral picture and those analytical results, our approach provides new insight into how and by how much the stationary AA method can improve the asymptotic linear convergence factor of ADMM. Numerical results also indicate that the optimal linear convergence factor of the stationary AA methods gives a useful estimate for the asymptotic linear convergence speed of the non-stationary AA method that is used in practice.

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