In every network, a distance between a pair of nodes can be defined as the length of the shortest path connecting these nodes, and therefore one may speak of a ball, its volume, and how it grows as a function of the radius. Spatial networks tend to feature peculiar volume scaling functions, as well as other topological features, including clustering, degree-degree correlation, clique complexes, and heterogeneity. Here we investigate a nongeometric random graph with a given degree distribution and an additional constraint on the volume scaling function. We show that such structures fall into the category of m -colored random graphs and study the percolation transition by using this theory. We prove that for a given degree distribution the pe...
We consider a class of random, weighted networks, obtained through a redefinition of patterns in ...
We consider various models of randomly grown graphs. In these models the vertices and the edges accu...
Publisher Copyright: © 2023 Wiley Periodicals LLC.A simple but powerful network model with (Formula ...
In every network, a distance between a pair of nodes can be defined as the length of the shortest pa...
Spatial random graphs capture several important properties of real-world networks. We prove quenched...
We discuss critical behavior of percolation on finite random networks. In a seminal paper, Aldous (1...
In this paper we study weighted distances in scale-free spatial network models: hyperbolic random gr...
We investigate spatial random graphs defined on the points of a Poisson process in d-dimensional spa...
Percolation theory can be used to describe the structural properties of complex networks using the g...
Spatial random graphs capture several important properties of real-world networks. We prove quenched...
22 pages, LateX, no figureUsing a maximum entropy principle to assign a statistical weight to any gr...
Recent reports suggest that evolving large-scale networks exhibit "explosive percolation": a large f...
In complex networks the degrees of adjacent nodes may often appear dependent -- which presents a mod...
Motivated by experiments on activity in neuronal cultures [J. Soriano, M. Rodr ́ıguez Mart́ınez, T. ...
In this paper, we investigate the effect of local structures on network processes. We investigate a ...
We consider a class of random, weighted networks, obtained through a redefinition of patterns in ...
We consider various models of randomly grown graphs. In these models the vertices and the edges accu...
Publisher Copyright: © 2023 Wiley Periodicals LLC.A simple but powerful network model with (Formula ...
In every network, a distance between a pair of nodes can be defined as the length of the shortest pa...
Spatial random graphs capture several important properties of real-world networks. We prove quenched...
We discuss critical behavior of percolation on finite random networks. In a seminal paper, Aldous (1...
In this paper we study weighted distances in scale-free spatial network models: hyperbolic random gr...
We investigate spatial random graphs defined on the points of a Poisson process in d-dimensional spa...
Percolation theory can be used to describe the structural properties of complex networks using the g...
Spatial random graphs capture several important properties of real-world networks. We prove quenched...
22 pages, LateX, no figureUsing a maximum entropy principle to assign a statistical weight to any gr...
Recent reports suggest that evolving large-scale networks exhibit "explosive percolation": a large f...
In complex networks the degrees of adjacent nodes may often appear dependent -- which presents a mod...
Motivated by experiments on activity in neuronal cultures [J. Soriano, M. Rodr ́ıguez Mart́ınez, T. ...
In this paper, we investigate the effect of local structures on network processes. We investigate a ...
We consider a class of random, weighted networks, obtained through a redefinition of patterns in ...
We consider various models of randomly grown graphs. In these models the vertices and the edges accu...
Publisher Copyright: © 2023 Wiley Periodicals LLC.A simple but powerful network model with (Formula ...