The structure of a network is an unlabeled graph, yet graphs in most models of complex networks are labeled by meaningless random integers. Is the associated labeling noise always negligible, or can it overpower the network-structural signal? To address this question, we introduce and consider the sparse unlabeled versions of popular network models and compare their entropy against the original labeled versions. We show that labeled and unlabeled Erdos-Rényi graphs are entropically equivalent, even though their degree distributions are very different. The labeled and unlabeled versions of the configuration model may have different prefactors in their leading entropy terms, although this remains conjectural. Our main results are upper and lo...
We introduce the (private) entropy of a directed graph (in a new network coding sense) as well as a ...
It is often claimed that the entropy of a network’s degree distribution is a proxy for its robustnes...
The degree-based network entropy which is inspired by Shannon’s entropy concept becomes the informat...
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 ...
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 ...
Randomized network ensembles are the null models of real networks and are extensively used to compa...
We study the richness of the ensemble of graphical structures (i.e., unlabeled graphs) of the one-di...
We study the notion of approximate entropy within the framework of network theory. Approximate entro...
We study the notion of approximate entropy within the framework of network theory. Approximate entro...
International audience<p>Graphs are important tools for modeling data in different biological, socia...
Even though power-law or close-to-power-law degree distributions are ubiquitously observed in a grea...
We normalize the combinatorial Laplacian of a graph by the degree sum, look at its eigenvalues as a ...
We normalize the combinatorial Laplacian of a graph by the degree sum, look at its eigenvalues as a ...
We introduce the (private) entropy of a directed graph (in a new network coding sense) as well as a ...
It is often claimed that the entropy of a network’s degree distribution is a proxy for its robustnes...
The degree-based network entropy which is inspired by Shannon’s entropy concept becomes the informat...
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 ...
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 ...
Randomized network ensembles are the null models of real networks and are extensively used to compa...
We study the richness of the ensemble of graphical structures (i.e., unlabeled graphs) of the one-di...
We study the notion of approximate entropy within the framework of network theory. Approximate entro...
We study the notion of approximate entropy within the framework of network theory. Approximate entro...
International audience<p>Graphs are important tools for modeling data in different biological, socia...
Even though power-law or close-to-power-law degree distributions are ubiquitously observed in a grea...
We normalize the combinatorial Laplacian of a graph by the degree sum, look at its eigenvalues as a ...
We normalize the combinatorial Laplacian of a graph by the degree sum, look at its eigenvalues as a ...
We introduce the (private) entropy of a directed graph (in a new network coding sense) as well as a ...
It is often claimed that the entropy of a network’s degree distribution is a proxy for its robustnes...
The degree-based network entropy which is inspired by Shannon’s entropy concept becomes the informat...