International audienceRandom-graph mixture models are very popular for modelling real data networks. Parameter estimation procedures usually rely on variational approximations, either combined with the expectation-maximization (EM) algorithm or with Bayesian approaches. Despite good results on synthetic data, the validity of the variational approximation is, however, not established. Moreover, these variational approaches aim at approximating the maximum likelihood or the maximum a posteriori estimators, whose behaviour in an asymptotic framework (as the sample size increases to ∞) remains unknown for these models. In this work, we show that, in many different affiliation contexts (for binary or weighted graphs), parameter estimators based ...
The mixture model is a method of choice for modeling heterogeneous random graphs, because it contain...
The statistical modeling of social network data is difficult due to the complex dependence structure...
International audienceInhomogeneous random graph models encompass many network models such as stocha...
International audienceRandom-graph mixture models are very popular for modelling real data networks....
To capture the heterozygosity of vertex degrees of networks and understand their distributions, a cl...
International audienceWe prove identifiability of parameters for a broad class of random graph mixtu...
This paper studies a statistical network model generated by a large number of randomly sized overlap...
Abstract. We define a general class of network formation models, Statistical Expo-nential Random Gra...
Abstract The Erdös–Rényi model of a network is simple and possesses many explicit expressions for av...
Generative algorithms for random graphs have yielded insights into the structure and evolution of re...
Graphs are the primary mathematical representation for networks, with nodes or vertices correspondin...
Recent advances in Exponential Random Graph Models (ERGMs), or p* models, include new specifications...
The statistical modeling of social network data is difficult due to the complex dependence structure...
The statistical modeling of social network data is difficult due to the complex dependence structure...
We will amalgamate the Rash model (for rectangular binary tables) and the newly introduced α-β model...
The mixture model is a method of choice for modeling heterogeneous random graphs, because it contain...
The statistical modeling of social network data is difficult due to the complex dependence structure...
International audienceInhomogeneous random graph models encompass many network models such as stocha...
International audienceRandom-graph mixture models are very popular for modelling real data networks....
To capture the heterozygosity of vertex degrees of networks and understand their distributions, a cl...
International audienceWe prove identifiability of parameters for a broad class of random graph mixtu...
This paper studies a statistical network model generated by a large number of randomly sized overlap...
Abstract. We define a general class of network formation models, Statistical Expo-nential Random Gra...
Abstract The Erdös–Rényi model of a network is simple and possesses many explicit expressions for av...
Generative algorithms for random graphs have yielded insights into the structure and evolution of re...
Graphs are the primary mathematical representation for networks, with nodes or vertices correspondin...
Recent advances in Exponential Random Graph Models (ERGMs), or p* models, include new specifications...
The statistical modeling of social network data is difficult due to the complex dependence structure...
The statistical modeling of social network data is difficult due to the complex dependence structure...
We will amalgamate the Rash model (for rectangular binary tables) and the newly introduced α-β model...
The mixture model is a method of choice for modeling heterogeneous random graphs, because it contain...
The statistical modeling of social network data is difficult due to the complex dependence structure...
International audienceInhomogeneous random graph models encompass many network models such as stocha...