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Auteurs principaux: Li, Zekai, Bian, Wei
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2412.07317
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author Li, Zekai
Bian, Wei
author_facet Li, Zekai
Bian, Wei
contents In this paper, we consider the Anderson acceleration method for solving the contractive fixed point problem, which is nonsmooth in general. We define a class of smoothing functions for the original nonsmooth fixed point mapping, which can be easily formulated for many cases (see section3). Then, taking advantage of the Anderson acceleration method, we proposed a Smoothing Anderson(m) algorithm, in which we utilized a smoothing function of the original nonsmooth fixed point mapping and update the smoothing parameter adaptively. In theory, we first demonstrate the r-linear convergence of the proposed Smoothing Anderson(m) algorithm for solving the considered nonsmooth contractive fixed point problem with r-factor no larger than c, where c is the contractive factor of the fixed point mapping. Second, we establish that both of the Smoothing Anderson(1) and the Smoothing EDIIS(1) algorithms are q-linear convergent with q-factor no larger than c. Finally, we present three numerical examples with practical applications from elastic net regression, free boundary problems for infinite journal bearings and non-negative least squares problem to illustrate the better performance of the proposed Smoothing Anderson(m) algorithm comparing with some popular methods.
format Preprint
id arxiv_https___arxiv_org_abs_2412_07317
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A smoothing Anderson acceleration algorithm for nonsmooth fixed point problem with linear convergence
Li, Zekai
Bian, Wei
Optimization and Control
In this paper, we consider the Anderson acceleration method for solving the contractive fixed point problem, which is nonsmooth in general. We define a class of smoothing functions for the original nonsmooth fixed point mapping, which can be easily formulated for many cases (see section3). Then, taking advantage of the Anderson acceleration method, we proposed a Smoothing Anderson(m) algorithm, in which we utilized a smoothing function of the original nonsmooth fixed point mapping and update the smoothing parameter adaptively. In theory, we first demonstrate the r-linear convergence of the proposed Smoothing Anderson(m) algorithm for solving the considered nonsmooth contractive fixed point problem with r-factor no larger than c, where c is the contractive factor of the fixed point mapping. Second, we establish that both of the Smoothing Anderson(1) and the Smoothing EDIIS(1) algorithms are q-linear convergent with q-factor no larger than c. Finally, we present three numerical examples with practical applications from elastic net regression, free boundary problems for infinite journal bearings and non-negative least squares problem to illustrate the better performance of the proposed Smoothing Anderson(m) algorithm comparing with some popular methods.
title A smoothing Anderson acceleration algorithm for nonsmooth fixed point problem with linear convergence
topic Optimization and Control
url https://arxiv.org/abs/2412.07317