Euler-Richardson method preconditioned by weakly stochastic matrix algebras: a potential contribution to Pagerank computation

Author:

Cipolla Stefano,Di Fiore Carmine,Tudisco Francesco

Abstract

Let S be a column stochastic matrix with at least one full row. Then S describes a Pagerank-like random walk since the computation of the Perron vector x of S can be tackled by solving a suitable M-matrix linear system Mx = y, where M = I − τ A, A is a column stochastic matrix and τ is a positive coefficient smaller than one. The Pagerank centrality index on graphs is a relevant example where these two formulations appear. Previous investigations have shown that the Euler- Richardson (ER) method can be considered in order to approach the Pagerank computation problem by means of preconditioning strategies. In this work, it is observed indeed that the classical power method can be embedded into the ER scheme, through a suitable simple preconditioner. Therefore, a new preconditioner is proposed based on fast Householder transformations and the concept of low complexity weakly stochastic algebras, which gives rise to an effective alternative to the power method for large-scale sparse problems. Detailed mathematical reasonings for this choice are given and the convergence properties discussed. Numerical tests performed on real-world datasets are presented, showing the advantages given by the use of the proposed Householder-Richardson method.

Publisher

University of Wyoming Libraries

Subject

Algebra and Number Theory

Cited by 6 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Acceleration of an adaptive generalized Arnoldi method for computing PageRank;AIMS Mathematics;2021

2. Nonlocal pagerank;ESAIM: Mathematical Modelling and Numerical Analysis;2021-01

3. A variation of Broyden class methods using Householder adaptive transforms;Computational Optimization and Applications;2020-07-14

4. Extrapolation methods for fixed‐point multilinear PageRank computations;Numerical Linear Algebra with Applications;2020-01-03

5. A short survey on preconditioners and Korovkin-type theorems;The Journal of Analysis;2019-10-22

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