English

Localization in Seeded PageRank

Social and Information Networks 2017-05-23 v4

Abstract

Seeded PageRank is an important network analysis tool for identifying and studying regions nearby a given set of nodes, which are called seeds. The seeded PageRank vector is the stationary distribution of a random walk that randomly resets at the seed nodes. Intuitively, this vector is concentrated nearby the given seeds, but is mathematically non-zero for all nodes in a connected graph. We study this concentration, or localization, and show a sublinear upper bound on the number of entries required to approximate seeded PageRank on all graphs with a natural type of skewed-degree sequence---similar to those that arise in many real-world networks. Experiments with both real-world and synthetic graphs give further evidence to the idea that the degree sequence of a graph has a major influence on the localization behavior of seeded PageRank. Moreover, we establish that this localization is non-trivial by showing that complete-bipartite graphs produce seeded PageRank vectors that cannot be approximated with a sublinear number of non-zeros.

Keywords

Cite

@article{arxiv.1509.00016,
  title  = {Localization in Seeded PageRank},
  author = {David F. Gleich and Kyle Kloster and Huda Nassar},
  journal= {arXiv preprint arXiv:1509.00016},
  year   = {2017}
}

Comments

39 pages. 6 figures. Codes available at https://github.com/nassarhuda/pprlocal

R2 v1 2026-06-22T10:45:41.089Z