TL;DR
This paper extends matrix function-based centrality measures to layer-coupled multiplex networks, providing efficient approximation techniques and demonstrating their effectiveness on large-scale real-world networks.
Contribution
It introduces a novel framework for centrality in multiplex networks using matrix functions and Krylov subspace methods, enabling scalable computation.
Findings
Efficient algorithms achieve linear complexity for large sparse networks.
The framework produces meaningful node and layer rankings.
Applicable to networks with over 10 million node-layer pairs.
Abstract
Centrality measures identify and rank the most influential entities of complex networks. In this paper, we generalize matrix function-based centrality measures, which have been studied extensively for single-layer and temporal networks in recent years to layer-coupled multiplex networks. The layers of these networks can reflect different relationships and interactions between entities or changing interactions over time. We use the supra-adjacency matrix as network representation, which has already been used to generalize eigenvector centrality to temporal and multiplex networks. With a suitable choice of edge weights, the definition of single-layer matrix function-based centrality measures in terms of walks on networks carries over naturally to the multilayer case. In contrast to other walk-based centralities, matrix function-based centralities are parameterized measures, which have…
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