In this paper we propose a Bayesian nonparametric approach to modelling sparse time-varying networks. A positive parameter is associated to each node of a network, which models the sociability of that node. Sociabilities are assumed to evolve over time, and are modelled via a dynamic point process model. The model is able to capture long term evolution of the sociabilities. Moreover, it yields sparse graphs, where the number of edges grows subquadratically with the number of nodes. The evolution of the sociabilities is described by a tractable time-varying generalised gamma process. We provide some theoretical insights into the model and apply it to three datasets: a simulated network, a network of hyperlinks between communities on Reddit, ...
In evolving complex systems such as air traffic and social organisations, collective effects emerge ...
Dyadic data are ubiquitous and arise in the fields of biology, epidemiology, sociology, and many mor...
A plethora of networks is being collected in a growing number of fields, including disease transmiss...
We propose a Bayesian nonparametric prior for time-varying networks. To each node of the network is ...
Bayesian Statistics provide us with a powerful approach to model real-world phenomena and quantify t...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
We consider a continuous-time model for the evolution of social networks. A social network is here c...
Network data representing relationship structures among a set of nodes are available in many fields ...
We develop a novel Bayesian nonparametric model for random bipartite graphs. The model is based on t...
Mathematical models of networked dynamical systems are ubiquitous - they are used to study power gri...
We propose a family of statistical models for social network evolution over time, which represents a...
This thesis presents Bayesian solutions to inference problems for three types of social network data...
Recent theoretical work on the modeling of network structure has focused primarily on networks that ...
We propose a family of statistical models for social network evolution over time, which represents ...
In evolving complex systems such as air traffic and social organisations, collective effects emerge ...
Dyadic data are ubiquitous and arise in the fields of biology, epidemiology, sociology, and many mor...
A plethora of networks is being collected in a growing number of fields, including disease transmiss...
We propose a Bayesian nonparametric prior for time-varying networks. To each node of the network is ...
Bayesian Statistics provide us with a powerful approach to model real-world phenomena and quantify t...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
We consider a continuous-time model for the evolution of social networks. A social network is here c...
Network data representing relationship structures among a set of nodes are available in many fields ...
We develop a novel Bayesian nonparametric model for random bipartite graphs. The model is based on t...
Mathematical models of networked dynamical systems are ubiquitous - they are used to study power gri...
We propose a family of statistical models for social network evolution over time, which represents a...
This thesis presents Bayesian solutions to inference problems for three types of social network data...
Recent theoretical work on the modeling of network structure has focused primarily on networks that ...
We propose a family of statistical models for social network evolution over time, which represents ...
In evolving complex systems such as air traffic and social organisations, collective effects emerge ...
Dyadic data are ubiquitous and arise in the fields of biology, epidemiology, sociology, and many mor...
A plethora of networks is being collected in a growing number of fields, including disease transmiss...