Triadic closure, the formation of a connection between two nodes in a network sharing a common neighbor, is considered a fundamental mechanism determining the clustered nature of many real-world topologies. In this work we define a static triadic closure (STC) model for clustered networks, whereby starting from an arbitrary fixed backbone network, each triad is closed independently with a given probability. Assuming a locally treelike backbone we derive exact expressions for the expected number of various small, loopy motifs (triangles, 4-loops, diamonds, and 4-cliques) as a function of moments of the backbone degree distribution. In this way we determine how transitivity and its suitably defined generalizations for higher-order motifs depend on the heterogeneity of the original network, revealing the existence of transitions due to the interplay between topologically inequivalent triads in the network. Furthermore, under reasonable assumptions for the moments of the backbone network, we establish approximate relationships between motif densities, which we test in a large dataset of real-world networks. We find a good agreement, indicating that STC is a realistic mechanism for the generation of clustered networks, while remaining simple enough to be amenable to analytical treatment.

Strongly clustered random graphs via triadic closure. An exactly solvable model / Cirigliano, Lorenzo; Castellano, Claudio; Baxter, Gareth J.; Timár, Gábor. - In: PHYSICAL REVIEW. E. - ISSN 2470-0045. - 109:2(2024), pp. 1-15. [10.1103/PhysRevE.109.024306]

Strongly clustered random graphs via triadic closure. An exactly solvable model

Cirigliano, Lorenzo
Primo
;
Castellano, Claudio
Secondo
;
2024

Abstract

Triadic closure, the formation of a connection between two nodes in a network sharing a common neighbor, is considered a fundamental mechanism determining the clustered nature of many real-world topologies. In this work we define a static triadic closure (STC) model for clustered networks, whereby starting from an arbitrary fixed backbone network, each triad is closed independently with a given probability. Assuming a locally treelike backbone we derive exact expressions for the expected number of various small, loopy motifs (triangles, 4-loops, diamonds, and 4-cliques) as a function of moments of the backbone degree distribution. In this way we determine how transitivity and its suitably defined generalizations for higher-order motifs depend on the heterogeneity of the original network, revealing the existence of transitions due to the interplay between topologically inequivalent triads in the network. Furthermore, under reasonable assumptions for the moments of the backbone network, we establish approximate relationships between motif densities, which we test in a large dataset of real-world networks. We find a good agreement, indicating that STC is a realistic mechanism for the generation of clustered networks, while remaining simple enough to be amenable to analytical treatment.
2024
clustering; cycles; network structure; complex networks
01 Pubblicazione su rivista::01a Articolo in rivista
Strongly clustered random graphs via triadic closure. An exactly solvable model / Cirigliano, Lorenzo; Castellano, Claudio; Baxter, Gareth J.; Timár, Gábor. - In: PHYSICAL REVIEW. E. - ISSN 2470-0045. - 109:2(2024), pp. 1-15. [10.1103/PhysRevE.109.024306]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1701516
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