The Second Eigenvalue of the Google Matrix 论文

2003引用 262
Spam and Phishing DetectionComplex Network Analysis TechniquesAdvanced Graph Neural Networks

摘要

Abstract. We determine analytically the modulus of the second eigenvalue for the web hyperlink matrix used by Google for computing PageRank. Specifically, we prove the following statement: “For any matrix A = [cP + (1 c)E]T, where P is an n n row-stochastic matrix, E is a nonnegative nn rank-one row-stochastic matrix, and 0 c 1, the second eigenvalue of A has modulus j2j c. Furthermore, if P has at least two irreducible closed subsets, the second eigenvalue 2 = c.” This statement has implications for the convergence rate of the standard PageR-ank algorithm as the web scales, for the stability of PageRank to perturbations to the link structure of the web, for the detection of Google spammers, and for the design of algorithms to speed up PageRank. 1