Even though power-law or close-to-power-law degree distributions are ubiquitously observed in a great variety of large real networks, the mathematically satisfactory treatment of random power-law graphs satisfying basic statistical requirements of realism is still lacking. These requirements are: sparsity, exchangeability, projectivity, and unbiasedness. The last requirement states that entropy of the graph ensemble must be maximized under the degree distribution constraints. Here we prove that the hypersoft configuration model (HSCM), belonging to the class of random graphs with latent hyperparameters, also known as inhomogeneous random graphs or $W$-random graphs, is an ensemble of random power-law graphs that are sparse, unbiased, and ei...
AbstractIn this note, we consider the von Neumann entropy of a density matrix obtained by normalizin...
The structure of a network is an unlabeled graph, yet graphs in most models of complex networks are ...
The structure of a network is an unlabeled graph, yet graphs in most models of complex networks are ...
Even though power-law or close-to-power-law degree distributions are ubiquitously observed in a grea...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constr...
22 pages, LateX, no figureUsing a maximum entropy principle to assign a statistical weight to any gr...
For a random graph subject to a topological constraint, the microcanonical ensemble requires the con...
We study the relation between the growth rate of a graph property and the entropy of the graph limit...
AbstractIn this note, we consider the von Neumann entropy of a density matrix obtained by normalizin...
The structure of a network is an unlabeled graph, yet graphs in most models of complex networks are ...
The structure of a network is an unlabeled graph, yet graphs in most models of complex networks are ...
Even though power-law or close-to-power-law degree distributions are ubiquitously observed in a grea...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constra...
Maximum entropy null models of networks come in different flavors that depend on the type of constr...
22 pages, LateX, no figureUsing a maximum entropy principle to assign a statistical weight to any gr...
For a random graph subject to a topological constraint, the microcanonical ensemble requires the con...
We study the relation between the growth rate of a graph property and the entropy of the graph limit...
AbstractIn this note, we consider the von Neumann entropy of a density matrix obtained by normalizin...
The structure of a network is an unlabeled graph, yet graphs in most models of complex networks are ...
The structure of a network is an unlabeled graph, yet graphs in most models of complex networks are ...