We propose a nonparametric framework for the analysis of networks, based on a natural limit object termed a graphon. We prove consistency of graphon estimation under general conditions, giving rates which include the important practical setting of sparse networks. Our results cover dense and sparse stochastic blockmodels with a growing number of classes, under model misspecification. We use profile likelihood methods, and connect our results to approximation theory, nonparametric function estimation, and the theory of graph limits
International audienceW-graph refers to a general class of random graph models that can be seen as a...
Abstract. The study of random graphs and networks had an explosive devel-opment in the last couple o...
While it is common practice in applied network analysis to report various standard network summary s...
This dissertation develops an inferential framework for a highly non-parametric class of network mod...
International audienceInhomogeneous random graph models encompass many network models such as stocha...
Network complexity has been studied for over half a century and has found a wide range of applicatio...
We explicitly quantify the empirically observed phenomenon that estimation under a stochastic block ...
Networks with a very large number of nodes appear in many application areas and pose challenges for ...
Dynamic networks where edges appear and disappear over time and multi-layer networks that deal with ...
This thesis focuses on a new graphon-based approach for fitting models to large networks and establi...
This dissertation aims to address the statistical consistency for two classical structural learning ...
Consider the twin problems of estimating the connection probability matrix of an inhomogeneous rando...
We design algorithms for fitting a high-dimensional statistical model to a large, sparse network wit...
We present asymptotic and finite-sample results on the use of stochastic blockmodels for the analysi...
Graph is a natural representation of network data. Over the decades many researches have been conduc...
International audienceW-graph refers to a general class of random graph models that can be seen as a...
Abstract. The study of random graphs and networks had an explosive devel-opment in the last couple o...
While it is common practice in applied network analysis to report various standard network summary s...
This dissertation develops an inferential framework for a highly non-parametric class of network mod...
International audienceInhomogeneous random graph models encompass many network models such as stocha...
Network complexity has been studied for over half a century and has found a wide range of applicatio...
We explicitly quantify the empirically observed phenomenon that estimation under a stochastic block ...
Networks with a very large number of nodes appear in many application areas and pose challenges for ...
Dynamic networks where edges appear and disappear over time and multi-layer networks that deal with ...
This thesis focuses on a new graphon-based approach for fitting models to large networks and establi...
This dissertation aims to address the statistical consistency for two classical structural learning ...
Consider the twin problems of estimating the connection probability matrix of an inhomogeneous rando...
We design algorithms for fitting a high-dimensional statistical model to a large, sparse network wit...
We present asymptotic and finite-sample results on the use of stochastic blockmodels for the analysi...
Graph is a natural representation of network data. Over the decades many researches have been conduc...
International audienceW-graph refers to a general class of random graph models that can be seen as a...
Abstract. The study of random graphs and networks had an explosive devel-opment in the last couple o...
While it is common practice in applied network analysis to report various standard network summary s...