When modeling network data using a latent position model, it is typical to assume that the nodes' positions are independently and identically distributed. However, this assumption implies the average node degree grows linearly with the number of nodes, which is inappropriate when the graph is thought to be sparse. We propose an alternative assumption---that the latent positions are generated according to a Poisson point process---and show that it is compatible with various levels of sparsity. Unlike other notions of sparse latent position models in the literature, our framework also defines a projective sequence of probability models, thus ensuring consistency of statistical inference across networks of different sizes. We establish conditi...
Neural networks are becoming increasingly popular in applications, but our mathematical understandin...
This research establishes that many real-world networks exhibit bounded expansion, a strong notion o...
Recent work has shown that sparse graphs containing many triangles cannot be reproduced using a fini...
When modeling network data using a latent position model, it is typical to assume that the nodes' po...
We derive properties of Latent Variable Models for networks, a broad class ofmodels that includes th...
This paper investigates properties of the class of graphs based on exchangeable point processes. We ...
A very popular class of models for networks posits that each node is represented by a point in a con...
A projective network model is a model that enables predictions to be made based on a subsample of th...
Networks play a central role in modern data analysis, enabling us to reason about systems by studyin...
A projective network model is a model that enables predictions to be made based on a subsample of th...
Directed networks are conveniently represented as graphs in which ordered edges encode interactions ...
The field of complex networks has seen a steady growth in the last decade, fuelled by an ever-growin...
There has been considerable recent interest in Bayesian modeling of high-dimensional networks via la...
I consider two classes of statistical models: networks and point processes. These random structures ...
This dissertation studies two frameworks for incorporating network data into economic modeling.In th...
Neural networks are becoming increasingly popular in applications, but our mathematical understandin...
This research establishes that many real-world networks exhibit bounded expansion, a strong notion o...
Recent work has shown that sparse graphs containing many triangles cannot be reproduced using a fini...
When modeling network data using a latent position model, it is typical to assume that the nodes' po...
We derive properties of Latent Variable Models for networks, a broad class ofmodels that includes th...
This paper investigates properties of the class of graphs based on exchangeable point processes. We ...
A very popular class of models for networks posits that each node is represented by a point in a con...
A projective network model is a model that enables predictions to be made based on a subsample of th...
Networks play a central role in modern data analysis, enabling us to reason about systems by studyin...
A projective network model is a model that enables predictions to be made based on a subsample of th...
Directed networks are conveniently represented as graphs in which ordered edges encode interactions ...
The field of complex networks has seen a steady growth in the last decade, fuelled by an ever-growin...
There has been considerable recent interest in Bayesian modeling of high-dimensional networks via la...
I consider two classes of statistical models: networks and point processes. These random structures ...
This dissertation studies two frameworks for incorporating network data into economic modeling.In th...
Neural networks are becoming increasingly popular in applications, but our mathematical understandin...
This research establishes that many real-world networks exhibit bounded expansion, a strong notion o...
Recent work has shown that sparse graphs containing many triangles cannot be reproduced using a fini...