This paper applies the variational methods to learn the parameters and the probability of evidence of directed graphic models (also known as Bayesian networks (BNs)) when data contains missing values. One class of variational methods, the Bethe/Kikuchi approximate algorithm, is combined with Expectation-Maximization (EM) to learn BN model parameters from data using an upper limit on cluster size. Our proposed method is novel since the Bethe/Kikuchi algorithms are typically only used to approximate marginal distributions. We review popular Bethe/Kikuchi approximate algorithms, including Belief Propagation (BP), Iterative Join Graph Propagation (IJGP), and Fundamental Cycle Base (FCB) algorithms for discrete BNs, and conduct experiments to te...
A Bayesian factor graph reduced to normal form consists in the interconnection of diverter units (o...
Probabilistic graphical models provide a natural framework for the representation of complex systems...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Abstract. A key problem in statistics and machine learning is inferring suitable structure of a mode...
Learning from data ranges between extracting essentials from the data, to the more fundamental and v...
Probabilistic inference in Bayesian networks, and even reasoning within error bounds are known to be...
We present an efficient procedure for estimating the marginal likelihood of probabilistic models wit...
This publication offers and investigates efficient Monte Carlo simulation methods in order to realiz...
AbstractThis paper presents a family of algorithms for approximate inference in credal networks (tha...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
Accurate evaluation of Bayesian model evidence for a given data set is a fundamental problem in mode...
the Bethe approximation for hyperparameter estimation in probabilistic image processing, J. Phys. A,...
Management of data imprecision has become increasingly important, especially with the advance of tec...
Graphical models are a general-purpose tool for modeling complex distributions in a way which facili...
A Bayesian factor graph reduced to normal form consists in the interconnection of diverter units (o...
Probabilistic graphical models provide a natural framework for the representation of complex systems...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
Abstract. A key problem in statistics and machine learning is inferring suitable structure of a mode...
Learning from data ranges between extracting essentials from the data, to the more fundamental and v...
Probabilistic inference in Bayesian networks, and even reasoning within error bounds are known to be...
We present an efficient procedure for estimating the marginal likelihood of probabilistic models wit...
This publication offers and investigates efficient Monte Carlo simulation methods in order to realiz...
AbstractThis paper presents a family of algorithms for approximate inference in credal networks (tha...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
Accurate evaluation of Bayesian model evidence for a given data set is a fundamental problem in mode...
the Bethe approximation for hyperparameter estimation in probabilistic image processing, J. Phys. A,...
Management of data imprecision has become increasingly important, especially with the advance of tec...
Graphical models are a general-purpose tool for modeling complex distributions in a way which facili...
A Bayesian factor graph reduced to normal form consists in the interconnection of diverter units (o...
Probabilistic graphical models provide a natural framework for the representation of complex systems...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...