This dissertation develops an inferential framework for a highly non-parametric class of network models called graphons, which are the limit objects of converging sequences in the theory of dense graph limits. The theory, introduced by Lovász and co-authors, uses structural properties of very large networks to describe a notion of convergence for sequences of dense graphs. Converging sequences define a limit which can be represented by a class of random graphs that preserve many properties of the networks in the sequence. These random graphs are intuitive and have a relatively simple mathematical representation, but they are very difficult to estimate due to their non-parametric nature. Our work, which develops scalable and consistent ...
This dissertation aims to address the statistical consistency for two classical structural learning ...
This thesis presents techniques of modeling large and dense networks and methods of computing distan...
Networks, which represent agents and interactions between them, arise in myriad applications through...
We propose a nonparametric framework for the analysis of networks, based on a natural limit object t...
This thesis focuses on a new graphon-based approach for fitting models to large networks and establi...
Network complexity has been studied for over half a century and has found a wide range of applicatio...
Clustering is an important unsupervised classification technique. In supervised classification, we a...
Networks arise from modeling complex systems in various fields, such as computer science, social sci...
International audienceWe are interested in recovering information on a stochastic block model from t...
In this dissertation, we present research on several topics in networks including community detectio...
This thesis consists of five papers on the subject of statistical modeling of stochastic networks. T...
Graph is a natural representation of network data. Over the decades many researches have been conduc...
International audienceWe study the approximation power of Graph Neural Networks (GNNs) on latent pos...
Abstract. We present a stochastic model for networks with arbitrary degree distributions and average...
The problem of modeling complex social networks is considered from three perspectives: The problem o...
This dissertation aims to address the statistical consistency for two classical structural learning ...
This thesis presents techniques of modeling large and dense networks and methods of computing distan...
Networks, which represent agents and interactions between them, arise in myriad applications through...
We propose a nonparametric framework for the analysis of networks, based on a natural limit object t...
This thesis focuses on a new graphon-based approach for fitting models to large networks and establi...
Network complexity has been studied for over half a century and has found a wide range of applicatio...
Clustering is an important unsupervised classification technique. In supervised classification, we a...
Networks arise from modeling complex systems in various fields, such as computer science, social sci...
International audienceWe are interested in recovering information on a stochastic block model from t...
In this dissertation, we present research on several topics in networks including community detectio...
This thesis consists of five papers on the subject of statistical modeling of stochastic networks. T...
Graph is a natural representation of network data. Over the decades many researches have been conduc...
International audienceWe study the approximation power of Graph Neural Networks (GNNs) on latent pos...
Abstract. We present a stochastic model for networks with arbitrary degree distributions and average...
The problem of modeling complex social networks is considered from three perspectives: The problem o...
This dissertation aims to address the statistical consistency for two classical structural learning ...
This thesis presents techniques of modeling large and dense networks and methods of computing distan...
Networks, which represent agents and interactions between them, arise in myriad applications through...