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Convergence analysis of a block preconditioned steepest descent eigensolver with implicit deflation
Authors:Ming Zhou  Zhaojun Bai  Yunfeng Cai  Klaus Neymeyr
Institution:1. Department of Mathematics, University of Rostock, Rostock, Mecklenburg-Vorpommern, Germany;2. Department of Computer Science and Department of Mathematics, University of California, Davis, Davis, California, USA;3. Cognitive Computing Lab, Baidu Research, Beijing, China
Abstract:Gradient-type iterative methods for solving Hermitian eigenvalue problems can be accelerated by using preconditioning and deflation techniques. A preconditioned steepest descent iteration with implicit deflation (PSD-id) is one of such methods. The convergence behavior of the PSD-id is recently investigated based on the pioneering work of Samokish on the preconditioned steepest descent method (PSD). The resulting non-asymptotic estimates indicate a superlinear convergence of the PSD-id under strong assumptions on the initial guess. The present paper utilizes an alternative convergence analysis of the PSD by Neymeyr under much weaker assumptions. We embed Neymeyr's approach into the analysis of the PSD-id using a restricted formulation of the PSD-id. More importantly, we extend the new convergence analysis of the PSD-id to a practically preferred block version of the PSD-id, or BPSD-id, and show the cluster robustness of the BPSD-id. Numerical examples are provided to validate the theoretical estimates.
Keywords:block eigensolvers  gradient iterations  Rayleigh quotient
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