On a shrink-and-expand technique for block eigensolvers

Yuqi Liu, Yuxin Ma, Meiyue Shao
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Abstract

In block eigenvalue algorithms, such as the subspace iteration algorithm and the locally optimal block preconditioned conjugate gradient (LOBPCG) algorithm, a large block size is often employed to achieve robustness and rapid convergence. However, using a large block size also increases the computational cost. Traditionally, the block size is typically reduced after convergence of some eigenpairs, known as deflation. In this work, we propose a non-deflation-based, more aggressive technique, where the block size is adjusted dynamically during the algorithm. This technique can be applied to a wide range of block eigensolvers, reducing computational cost without compromising convergence speed. We present three adaptive strategies for adjusting the block size, and apply them to four well-known eigensolvers as examples. Theoretical analysis and numerical experiments are provided to illustrate the efficiency of the proposed technique. In practice, an overall acceleration of 20% to 30% is observed.
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关于分块求解器的收缩与扩展技术
在块特征值算法中,如子空间迭代算法和局部最优块预处理共轭梯度(LOBPCG)算法,通常采用较大的块大小来实现鲁棒性和快速收敛。然而,使用大块尺寸也会增加计算成本。传统上,在收敛某些特征对后,通常会减小块大小,即所谓的放缩。在这项工作中,我们提出了一种基于非通缩的、更激进的技术,即在算法过程中动态调整块大小。这种技术可应用于各种块特征求解器,在不影响收敛速度的情况下降低计算成本。我们提出了调整块大小的三种自适应策略,并将它们应用于四个著名的求解器作为示例。理论分析和数值实验证明了所提技术的效率。在实践中,观察到总体加速了 20% 到 30%。
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