Personalized PageRank to a Target Node, Revisited
Abstract
Personalized PageRank (PPR) is a widely used node proximity measure in graph mining and network analysis. Given a source node and a target node , the PPR value represents the probability that a random walk from terminates at , and thus indicates the bidirectional importance between and . The majority of the existing work focuses on the single-source queries, which asks for the PPR value of a given source node and every node . However, the single-source query only reflects the importance of each node with respect to . In this paper, we consider the {\em single-target PPR query}, which measures the opposite direction of importance for PPR. Given a target node , the single-target PPR query asks for the PPR value of every node to a given target node . We propose RBS, a novel algorithm that answers approximate single-target queries with optimal computational complexity. We show that RBS improves three concrete applications: heavy hitters PPR query, single-source SimRank computation, and scalable graph neural networks. We conduct experiments to demonstrate that RBS outperforms the state-of-the-art algorithms in terms of both efficiency and precision on real-world benchmark datasets.
Cite
@article{arxiv.2006.11876,
title = {Personalized PageRank to a Target Node, Revisited},
author = {Hanzhi Wang and Zhewei Wei and Junhao Gan and Sibo Wang and Zengfeng Huang},
journal= {arXiv preprint arXiv:2006.11876},
year = {2020}
}
Comments
ACM SIGKDD 2020