Francesco Tudisco

Associate Professor (Reader) in Machine Learning

School of Mathematics, The University of Edinburgh
The Maxwell Institute for Mathematical Sciences
School of Mathematics, Gran Sasso Science Institute JCMB, King’s Buildings, Edinburgh EH93FD UK
email: f dot tudisco at ed.ac.uk

Node and Edge Eigenvector Centrality for Hypergraphs

Francesco Tudisco, Desmond J. Higham,
Communications Physics, 4:201 : (2021)

Abstract

Network scientists have shown that there is great value in studying pairwise interactions between components in a system. From a linear algebra point of view, this involves defining and evaluating functions of the associated adjacency matrix. Recent work indicates that there are further benefits from accounting directly for higher order interactions, notably through a hypergraph representation where an edge may involve multiple nodes. Building on these ideas, we motivate, define and analyze a class of spectral centrality measures for identifying important nodes and hyperedges in hypergraphs, generalizing existing network science concepts. By exploiting the latest developments in nonlinear Perron-Frobenius theory, we show how the resulting constrained nonlinear eigenvalue problems have unique solutions that can be computed efficiently via a nonlinear power method iteration. We illustrate the measures on realistic data sets.


Please cite this paper as:

@article{tudisco2021node,
  title={Node and edge nonlinear eigenvector centrality for hypergraphs},
  author={Tudisco, Francesco and Higham, Desmond J},
  journal={Communications Physics},
  volume={4},
  number={1},
  pages={1--10},
  year={2021},
  publisher={Nature Publishing Group}
}

Links: doi-open arxiv code

Keywords: networks Perron-Frobenius theory nonnegative tensors power method network centrality power method hypergraphs hypergraph Laplacian higher-order networks