Maximum entropy null models of networks come in different flavors that depend on the type of constraints under which entropy is maximized. If the constraints are on degree sequences or distributions, we are dealing with configuration models. If the degree sequence is constrained exactly, the corresponding microcanonical ensemble of random graphs with a given degree sequence is the configuration model per se. If the degree sequence is constrained only on average, the corresponding grand-canonical ensemble of random graphs with a given expected degree sequence is the soft configuration model. If the degree sequence is not fixed at all but randomly drawn from a fixed distribution, the corresponding hypercanonical ensemble of random graphs with...
This book is an introduction to maximum-entropy models of random graphs with given topological prope...
A fundamental issue of network data science is the ability to discern observed features that can be ...
Randomized network ensembles are the null models of real networks and are extensively used to compa...
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...
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...
Even though power-law or close-to-power-law degree distributions are ubiquitously observed in a grea...
22 pages, LateX, no figureUsing a maximum entropy principle to assign a statistical weight to any gr...
Even though power-law or close-to-power-law degree distributions are ubiquitously observed in a grea...
Barabási–Albert’s “Scale Free” model is the starting point for much of the accepted theory of the ev...
Abstract. Generalised degrees provide a natural bridge between local and global topological properti...
This book is an introduction to maximum-entropy models of random graphs with given topological prope...
A fundamental issue of network data science is the ability to discern observed features that can be ...
Randomized network ensembles are the null models of real networks and are extensively used to compa...
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...
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...
Even though power-law or close-to-power-law degree distributions are ubiquitously observed in a grea...
22 pages, LateX, no figureUsing a maximum entropy principle to assign a statistical weight to any gr...
Even though power-law or close-to-power-law degree distributions are ubiquitously observed in a grea...
Barabási–Albert’s “Scale Free” model is the starting point for much of the accepted theory of the ev...
Abstract. Generalised degrees provide a natural bridge between local and global topological properti...
This book is an introduction to maximum-entropy models of random graphs with given topological prope...
A fundamental issue of network data science is the ability to discern observed features that can be ...
Randomized network ensembles are the null models of real networks and are extensively used to compa...