You Shall not Pass: Avoiding Spurious Paths in Shortest-Path Based Centralities in Multidimensional Complex Networks
Klaus Wehmuth, Artur Ziviani, Leonardo Chinelate Costa, Ana Paula, Couto da Silva, Alex Borges Vieira

TL;DR
This paper introduces a method using MultiAspect Graphs to accurately compute shortest-path based centralities in multidimensional networks, avoiding errors caused by spurious paths from aggregation.
Contribution
The paper presents a novel MAG-based approach that prevents spurious paths during aggregation, ensuring correct centrality calculations in complex multidimensional networks.
Findings
Spurious paths significantly distort centrality metrics.
MAG representation effectively prevents spurious path issues.
Corrected centrality measures improve network analysis accuracy.
Abstract
In complex network analysis, centralities based on shortest paths, such as betweenness and closeness, are widely used. More recently, many complex systems are being represented by time-varying, multilayer, and time-varying multilayer networks, i.e. multidimensional (or high order) networks. Nevertheless, it is well-known that the aggregation process may create spurious paths on the aggregated view of such multidimensional (high order) networks. Consequently, these spurious paths may then cause shortest-path based centrality metrics to produce incorrect results, thus undermining the network centrality analysis. In this context, we propose a method able to avoid taking into account spurious paths when computing centralities based on shortest paths in multidimensional (or high order) networks. Our method is based on MultiAspect Graphs~(MAG) to represent the multidimensional networks and we…
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