Diffusion backbone of temporal higher-order networks
Shilun Zhang, Alberto Ceria, and Huijuan Wang

TL;DR
This paper introduces a diffusion backbone for temporal higher-order networks, quantifies hyperlink contributions to diffusion, and develops centrality metrics to predict their influence under various parameters.
Contribution
It proposes a novel method to construct a diffusion backbone in temporal higher-order networks and systematically designs hyperlink centrality metrics for different diffusion parameters.
Findings
Backbone contribution depends on diffusion parameters β and Θ.
Centrality metrics can effectively estimate hyperlink importance.
Different metrics perform better under different diffusion conditions.
Abstract
Temporal higher-order networks, where each hyperlink involving a group of nodes are activated or deactivated over time, are recently used to represent complex systems such as social contacts, interactions or collaborations that occur at specific times. Such networks are substrates for social contagion processes like the diffusion of information and opinions. In this work, we consider eight temporal higher-order networks derived from human face-to-face interactions in various contexts and the Susceptible-Infected threshold process on each of these networks: whenever a hyperlink is active and the number of infected nodes in the hyperlink exceeds a threshold , each susceptible node in the hyperlink is infected independently with probability . The objective is to understand (1) the contribution of each hyperlink to the diffusion process, namely, the average number of nodes…
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Taxonomy
TopicsNeural Networks and Applications
