A fundamental problem in the analysis of structured relational data like graphs, networks, databases, and matrices is to extract a summary of the common structure underlying relations between individual entities. Relational data are typically encoded in the form of arrays; invariance to the ordering of rows and columns corresponds to exchangeable arrays. Results in probability theory due to Aldous, Hoover and Kallenberg show that exchangeable arrays can be represented in terms of a random measurable function which constitutes the natural model parameter in a Bayesian model. We obtain a flexible yet simple Bayesian nonparametric model by placing a Gaussian process prior on the parameter function. Efficient inference utilises elliptical slice s...
A projective network model is a model that enables predictions to be made based on a subsample of th...
A projective network model is a model that enables predictions to be made based on a subsample of th...
Exchangeable random partition processes are the basis for Bayesian approaches to statistical inferen...
Abstract A fundamental problem in the analysis of structured relational data like graphs, networks, ...
Statistical network modelling has focused on representing the graph as a discrete structure, namely ...
Bayesian Statistics provide us with a powerful approach to model real-world phenomena and quantify t...
Bayesian Statistics has been increasingly popular in the last five decades. Besides having decision ...
Many common statistical models for network valued datasets fall under the remit of the graphon (cf. ...
Random probability measures are a cornerstone of Bayesian nonparametrics. By virtue of de Finetti's ...
We develop a novel Bayesian nonparametric model for random bipartite graphs. The model is based on t...
We introduce and study a class of exchangeable random graph ensembles. They can be used as statistic...
Exchangeability of observations corresponds to a condition shared by the vast majority of applicatio...
Abstract. We introduce a class of random graphs that we argue meets many of the desiderata one would...
International audienceExchangeable arrays are natural tools to model common forms of dependence betw...
Distributions over exchangeable matrices with infinitely many columns, such as the Indian buffet pro...
A projective network model is a model that enables predictions to be made based on a subsample of th...
A projective network model is a model that enables predictions to be made based on a subsample of th...
Exchangeable random partition processes are the basis for Bayesian approaches to statistical inferen...
Abstract A fundamental problem in the analysis of structured relational data like graphs, networks, ...
Statistical network modelling has focused on representing the graph as a discrete structure, namely ...
Bayesian Statistics provide us with a powerful approach to model real-world phenomena and quantify t...
Bayesian Statistics has been increasingly popular in the last five decades. Besides having decision ...
Many common statistical models for network valued datasets fall under the remit of the graphon (cf. ...
Random probability measures are a cornerstone of Bayesian nonparametrics. By virtue of de Finetti's ...
We develop a novel Bayesian nonparametric model for random bipartite graphs. The model is based on t...
We introduce and study a class of exchangeable random graph ensembles. They can be used as statistic...
Exchangeability of observations corresponds to a condition shared by the vast majority of applicatio...
Abstract. We introduce a class of random graphs that we argue meets many of the desiderata one would...
International audienceExchangeable arrays are natural tools to model common forms of dependence betw...
Distributions over exchangeable matrices with infinitely many columns, such as the Indian buffet pro...
A projective network model is a model that enables predictions to be made based on a subsample of th...
A projective network model is a model that enables predictions to be made based on a subsample of th...
Exchangeable random partition processes are the basis for Bayesian approaches to statistical inferen...