Degree-preserving graph dynamics -- a versatile process to construct random networks
Journal of Complex Networks, Volume 11, Issue 6, December 2023 Real-world networks evolve over time via additions or removals of vertices and edges. In current network evolution models, vertex degree varies or grows arbitrarily. A recently introduced degree-preserving network growth (DPG) family of...
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Zusammenfassung: | Journal of Complex Networks, Volume 11, Issue 6, December 2023 Real-world networks evolve over time via additions or removals of vertices
and edges. In current network evolution models, vertex degree varies or grows
arbitrarily. A recently introduced degree-preserving network growth (DPG)
family of models preserves vertex degree, resulting in structures significantly
different from and more diverse than previous models ([Nature Physics 2021,
DOI: 10.1038/s41567-021-01417-7]). Despite its degree preserving property, the
DPG model is able to replicate the output of several well-known real-world
network growth models. Simulations showed that many well-studied real-world
networks can be constructed from small seed graphs.
Here we start the development of a rigorous mathematical theory underlying
the DPG family of network growth models. We prove that the degree sequence of
the output of some of the well-known, real-world network growth models can be
reconstructed via the DPG process, using proper parametrization. We also show
that the general problem of deciding whether a simple graph can be obtained via
the DPG process from a small seed (DPG feasibility) is, as expected,
NP-complete. It is an important open problem to uncover whether there is a
structural reason behind the DPG-constructibility of real-world networks. |
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DOI: | 10.48550/arxiv.2111.11994 |