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Comparison of Krylov subspace methods on the PageRank problem
Authors:Gianna M Del Corso  Antonio Gullí  Francesco Romani
Institution:

aDipartimento di Informatica, Università di Pisa, Italy

bAsk Jeeves/Teoma, Pisa, Italy

Abstract:PageRank algorithm plays a very important role in search engine technology and consists in the computation of the eigenvector corresponding to the eigenvalue one of a matrix whose size is now in the billions. The problem incorporates a parameter greek small letter alpha that determines the difficulty of the problem. In this paper, the effectiveness of stationary and nonstationary methods are compared on some portion of real web matrices for different choices of greek small letter alpha. We see that stationary methods are very reliable and more competitive when the problem is well conditioned, that is for small values of greek small letter alpha. However, for large values of the parameter greek small letter alpha the problem becomes more difficult and methods such as preconditioned BiCGStab or restarted preconditioned GMRES become competitive with stationary methods in terms of Mflops count as well as in number of iterations necessary to reach convergence.
Keywords:Search engines  Krylov subspace methods  Large and sparse linear systems
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