Bayesian learning in undirected graphical models—computing posterior distributions over parameters and predictive quantities—is exceptionally difficult. We conjecture that for general undirected models, there are no tractable MCMC (Markov Chain Monte Carlo) schemes giving the correct equilibrium distribution over parameters. While this intractability, due to the partition function, is familiar to those performing parameter optimisation, Bayesian learning of posterior distributions over undirected model parameters has been unexplored and poses novel challenges. We propose several approximate MCMC schemes and test on fully observed binary models (Boltzmann machines) for a small coronary heart disease data set and larger artificial systems. Wh...
Bayesian inference of Gibbs random fields (GRFs) is often referred to as a doubly intractable proble...
Abstract. A key problem in statistics and machine learning is inferring suitable structure of a mode...
Bayesian inference for exponential random graph models Exponential random graph models are extremely...
Undirected graphical models are widely used in statistics, physics and machine vision. However Bayes...
In large-scale applications of undirected graphical models, such as social networks and biological n...
This thesis contains the author’s work in and contributions to the field of Monte Carlo sampling for...
Learning from data ranges between extracting essentials from the data, to the more fundamental and v...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
The paper deals with the problem of reconstructing a continuous one-dimensional function from discre...
This thesis considers the problem of performing inference on undirected graphical models with contin...
In machine-learning, Markov Chain Monte Carlo (MCMC) strategies such as Gibbs sampling are importan...
This publication offers and investigates efficient Monte Carlo simulation methods in order to realiz...
Graphical models are a general-purpose tool for modeling complex distributions in a way which facili...
Bissiri et al. (2016) present a general Bayesian approach where the like- lihood is replaced more ge...
EDML is a recently proposed algorithm for learning parameters in Bayesian networks. It was originall...
Bayesian inference of Gibbs random fields (GRFs) is often referred to as a doubly intractable proble...
Abstract. A key problem in statistics and machine learning is inferring suitable structure of a mode...
Bayesian inference for exponential random graph models Exponential random graph models are extremely...
Undirected graphical models are widely used in statistics, physics and machine vision. However Bayes...
In large-scale applications of undirected graphical models, such as social networks and biological n...
This thesis contains the author’s work in and contributions to the field of Monte Carlo sampling for...
Learning from data ranges between extracting essentials from the data, to the more fundamental and v...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
The paper deals with the problem of reconstructing a continuous one-dimensional function from discre...
This thesis considers the problem of performing inference on undirected graphical models with contin...
In machine-learning, Markov Chain Monte Carlo (MCMC) strategies such as Gibbs sampling are importan...
This publication offers and investigates efficient Monte Carlo simulation methods in order to realiz...
Graphical models are a general-purpose tool for modeling complex distributions in a way which facili...
Bissiri et al. (2016) present a general Bayesian approach where the like- lihood is replaced more ge...
EDML is a recently proposed algorithm for learning parameters in Bayesian networks. It was originall...
Bayesian inference of Gibbs random fields (GRFs) is often referred to as a doubly intractable proble...
Abstract. A key problem in statistics and machine learning is inferring suitable structure of a mode...
Bayesian inference for exponential random graph models Exponential random graph models are extremely...