A Survey on Optimization Studies of Group Centrality Metrics
Mustafa Can Camur, Chrysafis Vogiatzis

TL;DR
This paper surveys the development and current state of group centrality metrics in network science, emphasizing their optimization and application in various structures, and highlights future research directions in probabilistic, structural, and application areas.
Contribution
It provides the first comprehensive review of group centrality metrics from an operations research perspective, covering historical evolution, methodologies, and future research avenues.
Findings
Highlights the importance of group centrality in network analysis.
Identifies key structures and motifs in group centrality studies.
Suggests future research directions in probabilistic metrics and applications.
Abstract
Centrality metrics have become a popular concept in network science and optimization. Over the years, centrality has been used to assign importance and identify influential elements in various settings, including transportation, infrastructure, biological, and social networks, among others. That said, most of the literature has focused on nodal versions of centrality. Recently, group counterparts of centrality have started attracting scientific and practitioner interest. The identification of sets of nodes that are influential within a network is becoming increasingly more important. This is even more pronounced when these sets of nodes are required to induce a certain motif or structure. In this study, we review group centrality metrics from an operations research and optimization perspective for the first time. This is particularly interesting due to the rapid evolution and…
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Taxonomy
TopicsComplex Network Analysis Techniques · Advanced Optical Network Technologies
