Modularity is a quantity which has been introduced in the context of complex networks in order to quantify how close a network is to an ideal modular network in which the nodes form small interconnected communities that are joined together with relatively few edges. In this article, we consider this quantity on a probabilistic model of complex networks introduced by Krioukov et al. (2010, Phys. Rev. E, 82, 036106). This model views a complex network as an expression of hidden popularity hierarchies (i.e. nodes higher up in the hierarchies have more global reach), encapsulated by an underlying hyperbolic space. For certain parameters, this model was proved to have typical features that are observed in complex networks such as power law degre...
We consider a model for complex networks that was introduced by Krioukov et al. In this model, N poi...
The theme of this paper is the study of typical distances in a ran-dom graph model that was introduc...
Despite the fact that many important problems (including clustering) can be described using hypergra...
Modularity is a quantity which has been introduced in the context of complex networks in order to qu...
Modularity is a quality function on partitions of a network which may be used to identify highly clu...
We consider a model for complex networks that was introduced by Krioukov et al. (Phys Rev E 82 (2010...
We consider a model for complex networks that was introduced by Krioukov et al. (Phys Rev E 82 (2010...
41 pagesInternational audienceThe modularity of a graph is a parameter introduced by Newman and Girv...
In this paper we consider the clustering coefficient, and clustering function in a random graph mode...
In this paper we consider the clustering coefficient, and clustering function in a random graph mode...
In this paper we consider the clustering coefficient, and clustering function in a random graph mode...
Hyperbolic models are remarkably good at reproducing the scale-free, highly clustered and small-worl...
Abstract A remarkable approach for grasping the relevant statistical features of real networks with ...
In this paper we consider the clustering coefficient, and clustering function in a random graph mode...
In this paper we consider the clustering coefficient, and clustering function in a random graph mode...
We consider a model for complex networks that was introduced by Krioukov et al. In this model, N poi...
The theme of this paper is the study of typical distances in a ran-dom graph model that was introduc...
Despite the fact that many important problems (including clustering) can be described using hypergra...
Modularity is a quantity which has been introduced in the context of complex networks in order to qu...
Modularity is a quality function on partitions of a network which may be used to identify highly clu...
We consider a model for complex networks that was introduced by Krioukov et al. (Phys Rev E 82 (2010...
We consider a model for complex networks that was introduced by Krioukov et al. (Phys Rev E 82 (2010...
41 pagesInternational audienceThe modularity of a graph is a parameter introduced by Newman and Girv...
In this paper we consider the clustering coefficient, and clustering function in a random graph mode...
In this paper we consider the clustering coefficient, and clustering function in a random graph mode...
In this paper we consider the clustering coefficient, and clustering function in a random graph mode...
Hyperbolic models are remarkably good at reproducing the scale-free, highly clustered and small-worl...
Abstract A remarkable approach for grasping the relevant statistical features of real networks with ...
In this paper we consider the clustering coefficient, and clustering function in a random graph mode...
In this paper we consider the clustering coefficient, and clustering function in a random graph mode...
We consider a model for complex networks that was introduced by Krioukov et al. In this model, N poi...
The theme of this paper is the study of typical distances in a ran-dom graph model that was introduc...
Despite the fact that many important problems (including clustering) can be described using hypergra...