PageRank is a widespread model for analysing the relative relevance of nodes within large graphs arising in several applications. In the current paper, we present a cost-effective Hessenberg-type method built upon the Hessenberg process for the solution of difficult PageRank problems. The new method is very competitive with other popular algorithms in this field, such as Arnoldi-type methods, especially when the damping factor is close to $1$ and the dimension of the search subspace is large. The convergence and the complexity of the proposed algorithm are investigated. Numerical experiments are reported to show the efficiency of the new solver for practical PageRank computations.
翻译:PageRank是分析在若干应用中产生的大图中节点的相对相关性的广泛模式。在本文件中,我们介绍了基于Hessenberg进程的一种具有成本效益的赫森贝格型方法,以解决难于解决的PageRank问题。新方法与这一领域其他流行的算法,如Arnoldi型方法,竞争非常激烈,特别是当阻力系数接近1美元,搜索子空间的规模很大时。正在调查拟议的算法的趋同性和复杂性。据报告,数字实验表明新的求解器对实际的PageRank计算的效率。