International audienceInhomogeneous random graph models encompass many network models such as stochastic block models and latent position models. We consider the problem of statistical estimation of the matrix of connection probabilities based on the observations of the adjacency matrix of the network. Taking the stochastic block model as an approximation, we construct estimators of network connection probabilities -- the ordinary block constant least squares estimator, and its restricted version. We show that they satisfy oracle inequalities with respect to the block constant oracle. As a consequence, we derive optimal rates of estimation of the probability matrix. Our results cover the important setting of sparse networks. Another co...
Graphs are the primary mathematical representation for networks, with nodes or vertices correspondin...
We propose two novel approaches for recommender systems and networks. In the first part, we first gi...
Dynamic networks where edges appear and disappear over time and multi-layer networks that deal with ...
Inhomogeneous random graph models encompass many network models such as stochastic block models and ...
We propose a nonparametric framework for the analysis of networks, based on a natural limit object t...
Consider the twin problems of estimating the connection probability matrix of an inhomogeneous rando...
Networks with a very large number of nodes appear in many application areas and pose challenges for ...
Network complexity has been studied for over half a century and has found a wide range of applicatio...
International audienceWe are interested in recovering information on a stochastic block model from t...
In the present paper we study a sparse stochastic network enabled with a block structure. The popula...
We consider the problem of estimating a sparse dynamic Gaussian graphical model with L1 penalized ma...
Graph is a natural representation of network data. Over the decades many researches have been conduc...
This dissertation develops an inferential framework for a highly non-parametric class of network mod...
This dissertation aims to address the statistical consistency for two classical structural learning ...
The modeling and analysis of networks and network data has seen an explosion of interest in recent y...
Graphs are the primary mathematical representation for networks, with nodes or vertices correspondin...
We propose two novel approaches for recommender systems and networks. In the first part, we first gi...
Dynamic networks where edges appear and disappear over time and multi-layer networks that deal with ...
Inhomogeneous random graph models encompass many network models such as stochastic block models and ...
We propose a nonparametric framework for the analysis of networks, based on a natural limit object t...
Consider the twin problems of estimating the connection probability matrix of an inhomogeneous rando...
Networks with a very large number of nodes appear in many application areas and pose challenges for ...
Network complexity has been studied for over half a century and has found a wide range of applicatio...
International audienceWe are interested in recovering information on a stochastic block model from t...
In the present paper we study a sparse stochastic network enabled with a block structure. The popula...
We consider the problem of estimating a sparse dynamic Gaussian graphical model with L1 penalized ma...
Graph is a natural representation of network data. Over the decades many researches have been conduc...
This dissertation develops an inferential framework for a highly non-parametric class of network mod...
This dissertation aims to address the statistical consistency for two classical structural learning ...
The modeling and analysis of networks and network data has seen an explosion of interest in recent y...
Graphs are the primary mathematical representation for networks, with nodes or vertices correspondin...
We propose two novel approaches for recommender systems and networks. In the first part, we first gi...
Dynamic networks where edges appear and disappear over time and multi-layer networks that deal with ...