International audienceThe degrees are a classical and relevant way to study the topology of a network. They can be used to assess the goodness-of-fit for a given random graph model. In this paper we introduce goodness-of-fit tests for two classes of models. First, we consider the case of independent graph models such as the heterogeneous Erdös-Rényi model in which the edges have different connection probabilities. Second, we consider a generic model for exchangeable random graphs called the W-graph. The stochastic block model and the expected degree distribution model fall within this framework. We prove the asymptotic normality of the degree mean square under these independent and exchangeable models and derive formal tests. We study the p...
Logistic models for random graphs are commonly used to study binary networks when covariate informat...
Abstract One of the most influential recent results in network analysis is that many natural network...
To capture the heterozygosity of vertex degrees of networks and understand their distributions, a cl...
International audienceThe degrees are a classical and relevant way to study the topology of a networ...
The degree variance has been proposed for many years to study the topology of a network. It can be u...
We propose and analyse a novel nonparametric goodness-of-fit testing procedure for exchangeable expo...
Random graphs are matrices with independent 0–1 elements with probabilities determined by a small nu...
In the paper there are considered random graphs of Internet-type, i.e. graph node degrees are drawn ...
The Erd\"os Renyi graph is a popular choice to model network data as it is parsimoniously parametriz...
We introduce and study a class of exchangeable random graph ensembles. They can be used as statistic...
International audienceBipartite networks are a natural representation of the interactions between en...
We present a systematic examination of real network datasets using maximum likelihood estimation for...
In order to understand how the network structure impacts the underlying dynamics, we seek an assortm...
The most promising class of statistical models for expressing structural properties of social networ...
Abstract—Estimating characteristics of large graphs via sampling is vital in the study of complex ne...
Logistic models for random graphs are commonly used to study binary networks when covariate informat...
Abstract One of the most influential recent results in network analysis is that many natural network...
To capture the heterozygosity of vertex degrees of networks and understand their distributions, a cl...
International audienceThe degrees are a classical and relevant way to study the topology of a networ...
The degree variance has been proposed for many years to study the topology of a network. It can be u...
We propose and analyse a novel nonparametric goodness-of-fit testing procedure for exchangeable expo...
Random graphs are matrices with independent 0–1 elements with probabilities determined by a small nu...
In the paper there are considered random graphs of Internet-type, i.e. graph node degrees are drawn ...
The Erd\"os Renyi graph is a popular choice to model network data as it is parsimoniously parametriz...
We introduce and study a class of exchangeable random graph ensembles. They can be used as statistic...
International audienceBipartite networks are a natural representation of the interactions between en...
We present a systematic examination of real network datasets using maximum likelihood estimation for...
In order to understand how the network structure impacts the underlying dynamics, we seek an assortm...
The most promising class of statistical models for expressing structural properties of social networ...
Abstract—Estimating characteristics of large graphs via sampling is vital in the study of complex ne...
Logistic models for random graphs are commonly used to study binary networks when covariate informat...
Abstract One of the most influential recent results in network analysis is that many natural network...
To capture the heterozygosity of vertex degrees of networks and understand their distributions, a cl...