There has been considerable recent interest in Bayesian modeling of high-dimensional networks via latent space approaches. When the number of nodes increases, estimation based on Markov Chain Monte Carlo can be extremely slow and show poor mixing, thereby motivating research on alternative algorithms that scale well in high-dimensional settings. In this article, we focus on the latent factor model, a widely used approach for latent space modeling of network data. We develop scalable algorithms to conduct approximate Bayesian inference via stochastic optimization. Leveraging sparse representations of network data, the proposed algorithms show massive computational and storage benefits, and allow to conduct inference in settings with thousand...
Community detection is an important task in network analysis, in which we aim to learn a network par...
This dissertation discusses several aspects of estimation and inference for high dimensional network...
Bayesian sparse factor analysis has many applications; for example, it has been applied to the probl...
There has been considerable recent interest in Bayesian modeling of high-dimensional networks via la...
Abstract We propose a scalable approach for making inference about latent spaces of large networks. ...
Network inference has been extensively studied in several fields, such as systems biology and social...
<p>We propose a scalable approach for making inference about latent spaces of large networks. With a...
Gaussian process latent variable models (GPLVM) are a flexible and non-linear approach to dimensiona...
Spectral embedding of adjacency or Laplacian matrices of undirected graphs is a common technique for...
<p>Many modern applications fall into the category of "large-scale" statistical problems, in which b...
This thesis develops statistical methods for the analysis of high dimensional data: high d...
A number of recent approaches to modeling social networks have focussed on embedding the nodes in a ...
We propose a novel stochastic algorithm that randomly samples entire rows and columns of the matrix ...
Latent variable models are widely used in modern data science for both statistic and dynamic data. T...
A network consists of a set of vertices and a set of edges between these vertices. The vertices repr...
Community detection is an important task in network analysis, in which we aim to learn a network par...
This dissertation discusses several aspects of estimation and inference for high dimensional network...
Bayesian sparse factor analysis has many applications; for example, it has been applied to the probl...
There has been considerable recent interest in Bayesian modeling of high-dimensional networks via la...
Abstract We propose a scalable approach for making inference about latent spaces of large networks. ...
Network inference has been extensively studied in several fields, such as systems biology and social...
<p>We propose a scalable approach for making inference about latent spaces of large networks. With a...
Gaussian process latent variable models (GPLVM) are a flexible and non-linear approach to dimensiona...
Spectral embedding of adjacency or Laplacian matrices of undirected graphs is a common technique for...
<p>Many modern applications fall into the category of "large-scale" statistical problems, in which b...
This thesis develops statistical methods for the analysis of high dimensional data: high d...
A number of recent approaches to modeling social networks have focussed on embedding the nodes in a ...
We propose a novel stochastic algorithm that randomly samples entire rows and columns of the matrix ...
Latent variable models are widely used in modern data science for both statistic and dynamic data. T...
A network consists of a set of vertices and a set of edges between these vertices. The vertices repr...
Community detection is an important task in network analysis, in which we aim to learn a network par...
This dissertation discusses several aspects of estimation and inference for high dimensional network...
Bayesian sparse factor analysis has many applications; for example, it has been applied to the probl...