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Vector extrapolation methods with applications to solution of large systems of equations and to PageRank computations

机译:向量外推方法及其在解决大型方程组和PageRank计算中的应用

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An important problem that arises in different areas of science and engineering is that of computing the limits of sequences of vectors {x_n}, where x_n ∈ C~N with N very large. Such sequences arise, for example, in the solution of systems of linear or nonlinear equations by fixed-point iterative methods, and lim_(n→∞)x_n are simply the required solutions. In most cases of interest, however, these sequences converge to their limits extremely slowly. One practical way to make the sequences {x_n} converge more quickly is to apply to them vector extrapolation methods. In this work, we review two polynomial-type vector extrapolation methods that have proved to be very efficient convergence accelerators; namely, the minimal polynomial extrapolation (MPE) and the reduced rank extrapolation (RRE). We discuss the derivation of these methods, describe the most accurate and stable algorithms for their implementation along with the effective modes of usage in solving systems of equations, nonlinear as well as linear, and present their convergence and stability theory. We also discuss their close connection with the method of Arnoldi and with GMRES, two well-known Krylov subspace methods for linear systems. We show that they can be used very effectively to obtain the dominant eigenvectors of large sparse matrices when the corresponding eigenvalues are known, and provide the relevant theory as well. One such problem is that of computing the PageRank of the Google matrix, which we discuss in detail. In addition, we show that a recent extrapolation method of Kamvar et al. that was proposed for computing the PageRank is very closely related to MPE. We present a generalization of the method of Kamvar et al. along with a very economical algorithm for this generalization. We also provide the missing convergence theory for it.
机译:在科学和工程的不同领域中出现的一个重要问题是计算向量{x_n}的序列极限的问题,其中x_n∈C〜N,N非常大。例如,这些序列出现在使用定点迭代方法求解线性或非线性方程组的系统中,而lim_(n→∞)x_n只是所需的解决方案。然而,在大多数感兴趣的情况下,这些序列非常缓慢地收敛到其极限。使序列{x_n}收敛更快的一种实用方法是将向量应用于向量外推法。在这项工作中,我们回顾了两种已被证明是非常有效的收敛加速器的多项式类型向量外推方法。即最小多项式外推(MPE)和降阶秩外推(RRE)。我们讨论了这些方法的派生,描述了最准确,最稳定的算法实现方式,以及在求解方程组,非线性和线性系统中的有效使用方式,并介绍了它们的收敛性和稳定性理论。我们还将讨论它们与Arnoldi方法和GMRES的紧密联系,GMRES是线性系统的两种著名的Krylov子空间方法。我们表明,当已知相应的特征值时,它们可以非常有效地用于获得大型稀疏矩阵的主导特征向量,并提供相关的理论。这样的问题之一就是计算Google矩阵的PageRank的问题,我们将对此进行详细讨论。此外,我们显示了Kamvar等人的最新外推方法。用于计算PageRank的建议与MPE密切相关。我们提出了Kamvar等人方法的概括。以及用于此概括的非常经济的算法。我们还提供了缺失的收敛理论。

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