On the linear convergence of circumcentered isometry methods
Heinz H. Bauschke, Hui Ouyang, and Xianfu Wang

TL;DR
This paper proves linear convergence of circumcentered isometry methods (CIMs) in Hilbert spaces, extending previous results and showing some CRMs match the convergence rates of accelerated symmetric MAP, offering new acceleration insights.
Contribution
The paper extends linear convergence results of CRMs from reflections to isometries and demonstrates some CRMs achieve the convergence rate of accelerated symmetric MAP, a novel finding.
Findings
CIMs exhibit linear convergence in Hilbert spaces.
Some CRMs attain the convergence rate of accelerated symmetric MAP.
New class of CRMs with optimal convergence rates.
Abstract
The circumcentered Douglas--Rachford method (C--DRM), introduced by Behling, Bello Cruz and Santos, is an acceleration of the well-known Douglas-Rachford method (DRM) for finding the best approximation onto the intersection of finitely many affine subspaces. Inspired by the C--DRM, we introduced the more flexible circumcentered reflection method (CRM) and circumcentered isometry method (CIM). The CIM essentially chooses the closest point to the solution among all of the points in an associated affine hull as its iterate and is a generalization of the CRM. The circumcentered--reflection method introduced by Behling et al. to generalize the C--DRM is a special class of our CRM. We consider the CIM induced by a set of finitely many isometries for finding the best approximation onto the intersection of fixed point sets of the isometries which turns out to be an intersection of finitely…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
Taxonomy
TopicsMatrix Theory and Algorithms · Advanced Optimization Algorithms Research · Optimization and Variational Analysis
