Matrix function-based centrality measures for layer-coupled multiplex networks

04/29/2021
by   Kai Bergermann, et al.
0

Centrality measures identify the most important nodes in a complex network. In recent years, multilayer networks have emerged as a flexible tool to create increasingly realistic models of complex systems. In this paper, we generalize matrix function-based centrality and communicability measures to the case of layer-coupled multiplex networks. We use the supra-adjacency matrix as the network representation, which has already been used to generalize eigenvector centrality to temporal and multiplex networks. With this representation, the definition of single-layer matrix function-based centrality measures in terms of walks on the networks carries over naturally to the multilayer case. Several aggregation techniques allow the ranking of nodes, layers, as well as node-layer pairs in terms of their importance in the network. We present efficient and scalable numerical methods based on Krylov subspace techniques and Gauss quadrature rules, which provide a high accuracy in only a few iterations and which scale linearly in the network size under the assumption of sparsity in the supra-adjacency matrix. Finally, we present extensive numerical studies for both directed and undirected as well as weighted and unweighted multiplex networks. While we focus on social and transportation applications the networks' size ranges between 89 and 2.28 · 10^6 nodes and between 3 and 37 layers.

READ FULL TEXT

page 7

page 11

research
05/03/2022

Eigenvector centrality for multilayer networks with dependent node importance

We present a novel approach for computing a variant of eigenvector centr...
research
05/22/2018

A change of perspective in network centrality

Typing Yesterday into the search-bar of your browser provides a long lis...
research
05/05/2022

Perron communicability and sensitivity of multilayer networks

Modeling complex systems that consist of different types of objects lead...
research
06/14/2019

Supracentrality Analysis of Temporal Networks with Directed Interlayer Coupling

We describe centralities in temporal networks using a supracentrality fr...
research
08/18/2023

Enhancing multiplex global efficiency

Modeling complex systems that consist of different types of objects lead...
research
09/14/2022

Efficient multi-relational network representation using primes

Multi-relational networks play an important role in today's world and ar...
research
01/17/2006

Learning about knowledge: A complex network approach

This article describes an approach to modeling knowledge acquisition in ...

Please sign up or login with your details

Forgot password? Click here to reset