Scalable Katz Ranking Computation in Large Static and Dynamic Graphs

Abstract

Network analysis defines a number of centrality measures to identify the most central nodes in a network. Fast computation of those measures is a major challenge in algorithmic network analysis. Aside from closeness and betweenness, Katz centrality is one of the established centrality measures. In this article, we consider the problem of computing rankings for Katz centrality. In particular, we propose upper and lower bounds on the Katz score of a given node. Previous approaches relied on numerical approximation or heuristics to compute Katz centrality rankings; however, we construct an algorithm that iteratively improves those upper and lower bounds until a correct Katz ranking is obtained. We extend our algorithm to dynamic graphs while maintaining its correctness guarantees. Experiments demonstrate that our static graph algorithm outperforms both numerical approaches and heuristics with speedups between \( 1.5\times \) and \( 3.5\times \) , depending on the desired quality guarantees. Our dynamic graph algorithm improves upon the static algorithm for update batches of less than 10,000 edges. We provide efficient parallel CPU and GPU implementations of our algorithms that enable near real-time Katz centrality computation for graphs with hundreds of millions of edges in fractions of seconds.

Document Details

Document Type
Pub Defense Publication
Publication Date
Jul 07, 2022
Source ID
10.1145/3524615

Entities

People

  • Alexander van der Grinten
  • David A. Bader
  • Elisabetta Bergamini
  • Henning Meyerhenke
  • Oded Green

Organizations

  • Defense Advanced Research Projects Agency
  • German Research Foundation
  • Humboldt-Universität zu Berlin
  • Karlsruhe Institute of Technology
  • New Jersey Institute of Technology
  • Nvidia

Tags

Fields of Study

  • Computer science

Readers

  • Canadian European Scientific Immigration and Epilepsy Clearance Studies
  • Graph Algorithms and Convex Optimization.
  • Neural Network Machine Learning.