This paper investigates properties of the class of graphs based on exchangeable point processes. We provide asymptotic expressions for the number of edges, number of nodes, and degree distributions, identifying four regimes: (i) a dense regime, (ii) a sparse, almost dense regime, (iii) a sparse regime with power-law behaviour, and (iv) an almost extremely sparse regime. We show that, under mild assumptions, both the global and local clustering coefficients converge to constants which may or may not be the same. We also derive a central limit theorem for subgraph counts and for the number of nodes. Finally, we propose a class of models within this framework where one can separately control the latent structure and the global sparsity/power-l...
We develop a new algorithm to cluster sparse unweighted graphs – i.e. partition the nodes into disjo...
Let X1n,...,X>nn denote the locations of n points in a bounded, [gamma]-dimensional, Euclidean regio...
We propose a novel statistical model for sparse networks with overlapping community structure. The m...
This paper investigates properties of the class of graphs based on exchangeable point processes. We ...
Many popular network models rely on the assumption of (vertex) exchangeability, in which the distrib...
We study a recent model for edge exchangeable random graphs introduced by Crane and Dempsey; in part...
In 2007 we introduced a general model of sparse random graphs with independence between the edges. T...
Many common statistical models for network valued datasets fall under the remit of the graphon (cf. ...
Abstract. We introduce and develop a theory of limits for sequences of sparse graphs based on Lp gra...
Abstract. We introduce and develop a theory of limits for sequences of sparse graphs based on Lp gra...
We introduce and develop a theory of limits for sequences of sparsegraphs based on Lp graphons, whic...
This article studies the asymptotic properties of Bayesian or frequentist estimators of a vector of ...
This dissertation studies two important algorithmic problems on networks : graph diffusion and clust...
We consider the contact process on a random graph with a fixed degree distribution given by a power ...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
We develop a new algorithm to cluster sparse unweighted graphs – i.e. partition the nodes into disjo...
Let X1n,...,X>nn denote the locations of n points in a bounded, [gamma]-dimensional, Euclidean regio...
We propose a novel statistical model for sparse networks with overlapping community structure. The m...
This paper investigates properties of the class of graphs based on exchangeable point processes. We ...
Many popular network models rely on the assumption of (vertex) exchangeability, in which the distrib...
We study a recent model for edge exchangeable random graphs introduced by Crane and Dempsey; in part...
In 2007 we introduced a general model of sparse random graphs with independence between the edges. T...
Many common statistical models for network valued datasets fall under the remit of the graphon (cf. ...
Abstract. We introduce and develop a theory of limits for sequences of sparse graphs based on Lp gra...
Abstract. We introduce and develop a theory of limits for sequences of sparse graphs based on Lp gra...
We introduce and develop a theory of limits for sequences of sparsegraphs based on Lp graphons, whic...
This article studies the asymptotic properties of Bayesian or frequentist estimators of a vector of ...
This dissertation studies two important algorithmic problems on networks : graph diffusion and clust...
We consider the contact process on a random graph with a fixed degree distribution given by a power ...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
We develop a new algorithm to cluster sparse unweighted graphs – i.e. partition the nodes into disjo...
Let X1n,...,X>nn denote the locations of n points in a bounded, [gamma]-dimensional, Euclidean regio...
We propose a novel statistical model for sparse networks with overlapping community structure. The m...