Dynamically accelerating the power iteration with momentum

IF 1.8 3区 数学 Q1 MATHEMATICS Numerical Linear Algebra with Applications Pub Date : 2024-08-24 DOI:10.1002/nla.2584
Christian Austin, Sara Pollock, Yunrong Zhu
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Abstract

In this article, we propose, analyze and demonstrate a dynamic momentum method to accelerate power and inverse power iterations with minimal computational overhead. The method can be applied to real diagonalizable matrices, is provably convergent with acceleration in the symmetric case, and does not require a priori spectral knowledge. We review and extend background results on previously developed static momentum accelerations for the power iteration through the connection between the momentum accelerated iteration and the standard power iteration applied to an augmented matrix. We show that the augmented matrix is defective for the optimal parameter choice. We then present our dynamic method which updates the momentum parameter at each iteration based on the Rayleigh quotient and two previous residuals. We present convergence and stability theory for the method by considering a power‐like method consisting of multiplying an initial vector by a sequence of augmented matrices. We demonstrate the developed method on a number of benchmark problems, and see that it outperforms both the power iteration and often the static momentum acceleration with optimal parameter choice. Finally, we present and demonstrate an explicit extension of the algorithm to inverse power iterations.
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动态加速动力迭代
在本文中,我们提出、分析并演示了一种动态动量法,它能以最小的计算开销加速幂级数和反幂级数迭代。该方法可用于实可对角化矩阵,在对称情况下加速收敛,且无需先验谱知识。通过动量加速迭代与应用于增强矩阵的标准幂迭代之间的联系,我们回顾并扩展了之前开发的幂迭代静态动量加速的背景结果。我们证明,增强矩阵在最优参数选择方面存在缺陷。然后,我们介绍了我们的动态方法,该方法每次迭代都会根据瑞利商和之前的两个残差更新动量参数。我们提出了该方法的收敛性和稳定性理论,并考虑了一种类似于幂级数的方法,即初始向量乘以一系列增强矩阵。我们在一些基准问题上演示了所开发的方法,发现它的性能优于幂迭代法,而且在参数选择最优的情况下往往优于静态动量加速法。最后,我们介绍并演示了该算法对反幂次迭代的明确扩展。
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来源期刊
CiteScore
3.40
自引率
2.30%
发文量
50
审稿时长
12 months
期刊介绍: Manuscripts submitted to Numerical Linear Algebra with Applications should include large-scale broad-interest applications in which challenging computational results are integral to the approach investigated and analysed. Manuscripts that, in the Editor’s view, do not satisfy these conditions will not be accepted for review. Numerical Linear Algebra with Applications receives submissions in areas that address developing, analysing and applying linear algebra algorithms for solving problems arising in multilinear (tensor) algebra, in statistics, such as Markov Chains, as well as in deterministic and stochastic modelling of large-scale networks, algorithm development, performance analysis or related computational aspects. Topics covered include: Standard and Generalized Conjugate Gradients, Multigrid and Other Iterative Methods; Preconditioning Methods; Direct Solution Methods; Numerical Methods for Eigenproblems; Newton-like Methods for Nonlinear Equations; Parallel and Vectorizable Algorithms in Numerical Linear Algebra; Application of Methods of Numerical Linear Algebra in Science, Engineering and Economics.
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