Seeking critical nodes in digraphs

The Critical Node Detection Problem (CNDP) consists in finding the set of nodes, defined critical, whose removal maximally degrades the graph. In this work we focus on finding the set of critical nodes whose removal minimizes the pairwise connectivity of a direct graph (digraph). Such problem has be...

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Veröffentlicht in:Journal of computational science 2023-05, Vol.69, p.102012, Article 102012
Hauptverfasser: Bernaschi, Massimo, Celestini, Alessandro, Cianfriglia, Marco, Guarino, Stefano, Italiano, Giuseppe F., Mastrostefano, Enrico, Zastrow, Lena Rebecca
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Sprache:eng
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Zusammenfassung:The Critical Node Detection Problem (CNDP) consists in finding the set of nodes, defined critical, whose removal maximally degrades the graph. In this work we focus on finding the set of critical nodes whose removal minimizes the pairwise connectivity of a direct graph (digraph). Such problem has been proved to be NP-hard, thus we need efficient heuristics to detect critical nodes in real-world applications. We aim at understanding which is the best heuristic we can apply to identify critical nodes in practice, i.e., taking into account time constrains and real-world networks. We present an in-depth analysis of several heuristics we ran on both real-world and on synthetic graphs. We define and evaluate two different strategies for each heuristic: standard and iterative. Our main findings show that an algorithm recently proposed to solve the CNDP and that can be used as heuristic for the general case provides the best results in real-world graphs, and it is also the fastest. However, there are few exceptions that are thoroughly analyzed and discussed. We show that among the heuristics we analyzed, few of them cannot be applied to very large graphs, when the iterative strategy is used, due to their time complexity. Finally, we suggest possible directions to further improve the heuristic providing the best results. •We study the Critical Node Detection Problem (CNDP) for real-world applications.•We present an in depth analysis of several CNDP heuristics.•We release CNH, a software implementing a recent heuristic proposed to solve CNDP.•We identify a few issues of CNH and we suggest possible directions to overcome them.•We discuss few scenarios in which other heuristics work better than CNH.
ISSN:1877-7503
1877-7511
DOI:10.1016/j.jocs.2023.102012