Machine learning methods on graphs have proven useful in many applications due to their ability to handle generally structured data. The framework of Gaussian Markov Random Fields (GMRFs) provides a principled way to define Gaussian models on graphs by utilizing their sparsity structure. We propose a flexible GMRF model for general graphs built on the multi-layer structure of Deep GMRFs, originally proposed for lattice graphs only. By designing a new type of layer we enable the model to scale to large graphs. The layer is constructed to allow for efficient training using variational inference and existing software frameworks for Graph Neural Networks. For a Gaussian likelihood, close to exact Bayesian inference is available for the latent f...
We study learning curves for Gaussian process regression which characterise per-formance in terms of...
In this paper, we propose a Bayesian approach to inference on multiple Gaussian graphical models. Sp...
In this paper we introduce deep Gaussian process (GP) models. Deep GPs are a deep belief net-work ba...
Machine learning methods on graphs have proven useful in many applications due to their ability to h...
Dynamics of many real-world systems are naturally modeled by structured regression of representation...
The adaptive processing of structured data is a long-standing research topic in machine learning tha...
Structured prediction is an important and well- studied problem with many applications across machin...
We consider the problem of learning a conditional Gaussian graphical model in the presence of latent...
stitute two of the most important foci of modern machine learning research. In this preliminary work...
<p>We consider the problem of learning a conditional Gaussian graphical model in the presence of lat...
stitute two of the most important foci of modern machine learning research. In this preliminary work...
Gaussian graphical models (GGMs) are a popular tool to learn the dependence structure in the form of...
Attributed graphs, which contain rich contextual features beyond just network structure, are ubiquit...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
A powerful modelling tool for spatial data is the framework of Gaussian Markov random fields (GMRFs)...
We study learning curves for Gaussian process regression which characterise per-formance in terms of...
In this paper, we propose a Bayesian approach to inference on multiple Gaussian graphical models. Sp...
In this paper we introduce deep Gaussian process (GP) models. Deep GPs are a deep belief net-work ba...
Machine learning methods on graphs have proven useful in many applications due to their ability to h...
Dynamics of many real-world systems are naturally modeled by structured regression of representation...
The adaptive processing of structured data is a long-standing research topic in machine learning tha...
Structured prediction is an important and well- studied problem with many applications across machin...
We consider the problem of learning a conditional Gaussian graphical model in the presence of latent...
stitute two of the most important foci of modern machine learning research. In this preliminary work...
<p>We consider the problem of learning a conditional Gaussian graphical model in the presence of lat...
stitute two of the most important foci of modern machine learning research. In this preliminary work...
Gaussian graphical models (GGMs) are a popular tool to learn the dependence structure in the form of...
Attributed graphs, which contain rich contextual features beyond just network structure, are ubiquit...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
A powerful modelling tool for spatial data is the framework of Gaussian Markov random fields (GMRFs)...
We study learning curves for Gaussian process regression which characterise per-formance in terms of...
In this paper, we propose a Bayesian approach to inference on multiple Gaussian graphical models. Sp...
In this paper we introduce deep Gaussian process (GP) models. Deep GPs are a deep belief net-work ba...