We explicitly quantify the empirically observed phenomenon that estimation under a stochastic block model (SBM) is hard if the model contains classes that are similar. More precisely, we consider estimation of certain functionals of random graphs generated by a SBM. The SBM may or may not be sparse, and the number of classes may be fixed or grow with the number of vertices. Minimax lower and upper bounds of estimation along specific submodels are derived. The results are nonasymptotic and imply that uniform estimation of a single connectivity parameter is much slower than the expected asymptotic pointwise rate. Specifically, the uniform quadratic rate does not scale as the number of edges, but only as the number of vertices. The lower bound...
It has been shown in recent years that the stochastic block model is sometimes undetectable in the s...
Network complexity has been studied for over half a century and has found a wide range of applicatio...
Stochastic blockmodels have been widely proposed as a probabilistic random graph model for the analy...
We propose a nonparametric framework for the analysis of networks, based on a natural limit object t...
Abstract. The interaction between transitivity and sparsity, two common features in empirical networ...
We present asymptotic and finite-sample results on the use of stochastic blockmodels for the analysi...
International audienceWe are interested in recovering information on a stochastic block model from t...
Abstract: In the high dimensional Stochastic Blockmodel for a random network, the number of clusters...
We consider the community detection problem in sparse random hypergraphs under the non-uniform hyper...
This article studies the asymptotic properties of Bayesian or frequentist estimators of a vector of ...
International audienceInhomogeneous random graph models encompass many network models such as stocha...
In the present paper we study a sparse stochastic network enabled with a block structure. The popula...
In this paper, we study the information-theoretic limits of community detection in the symmetric two...
This dissertation develops an inferential framework for a highly non-parametric class of network mod...
The stochastic block model (SBM) is extensively used to model networks in which users belong to cert...
It has been shown in recent years that the stochastic block model is sometimes undetectable in the s...
Network complexity has been studied for over half a century and has found a wide range of applicatio...
Stochastic blockmodels have been widely proposed as a probabilistic random graph model for the analy...
We propose a nonparametric framework for the analysis of networks, based on a natural limit object t...
Abstract. The interaction between transitivity and sparsity, two common features in empirical networ...
We present asymptotic and finite-sample results on the use of stochastic blockmodels for the analysi...
International audienceWe are interested in recovering information on a stochastic block model from t...
Abstract: In the high dimensional Stochastic Blockmodel for a random network, the number of clusters...
We consider the community detection problem in sparse random hypergraphs under the non-uniform hyper...
This article studies the asymptotic properties of Bayesian or frequentist estimators of a vector of ...
International audienceInhomogeneous random graph models encompass many network models such as stocha...
In the present paper we study a sparse stochastic network enabled with a block structure. The popula...
In this paper, we study the information-theoretic limits of community detection in the symmetric two...
This dissertation develops an inferential framework for a highly non-parametric class of network mod...
The stochastic block model (SBM) is extensively used to model networks in which users belong to cert...
It has been shown in recent years that the stochastic block model is sometimes undetectable in the s...
Network complexity has been studied for over half a century and has found a wide range of applicatio...
Stochastic blockmodels have been widely proposed as a probabilistic random graph model for the analy...