Fractal Gaussian Networks: A sparse random graph model based on Gaussian Multiplicative Chaos
This work addresses the need for analytically tractable fractal network models, which are incremental as it builds on existing random graph and fractal theory, for researchers in network science and applied mathematics.
The authors tackled the problem of modeling fractal structures in networks by proposing Fractal Gaussian Networks (FGN), a sparse random graph model based on Gaussian Multiplicative Chaos, and they characterized properties like edge and triangle counts, showing distinct scaling patterns with network size.
We propose a novel stochastic network model, called Fractal Gaussian Network (FGN), that embodies well-defined and analytically tractable fractal structures. Such fractal structures have been empirically observed in diverse applications. FGNs interpolate continuously between the popular purely random geometric graphs (a.k.a. the Poisson Boolean network), and random graphs with increasingly fractal behavior. In fact, they form a parametric family of sparse random geometric graphs that are parametrized by a fractality parameter which governs the strength of the fractal structure. FGNs are driven by the latent spatial geometry of Gaussian Multiplicative Chaos (GMC), a canonical model of fractality in its own right. We asymptotically characterize the expected number of edges, triangles, cliques and hub-and-spoke motifs in FGNs, unveiling a distinct pattern in their scaling with the size parameter of the network. We then examine the natural question of detecting the presence of fractality and the problem of parameter estimation based on observed network data, in addition to fundamental properties of the FGN as a random graph model. We also explore fractality in community structures by unveiling a natural stochastic block model in the setting of FGNs. Finally, we substantiate our results with phenomenological analysis of the FGN in the context of available scientific literature for fractality in networks, including applications to real-world massive network data.