Accurate evaluation of Bayesian model evidence for a given data set is a fundamental problem in model development. Since evidence evaluations are usually intractable, in practice variational free energy (VFE) minimization provides an attractive alternative, as the VFE is an upper bound on negative model log-evidence (NLE). In order to improve tractability of the VFE, it is common to manipulate the constraints in the search space for the posterior distribution of the latent variables. Unfortunately, constraint manipulation may also lead to a less accurate estimate of the NLE. Thus, constraint manipulation implies an engineering trade-off between tractability and accuracy of model evidence estimation. In this paper, we develop a unifying acco...
This paper applies the variational methods to learn the parameters and the probability of evidence o...
According to physics predictions, the free energy of random factor graph models that satisfy a certa...
The benefits of automating design cycles for Bayesian inference-based algorithms are becoming increa...
Accurate evaluation of Bayesian model evidence for a given data set is a fundamental problem in mode...
Model evidence is a fundamental performance measure in Bayesian machine learning as it represents ho...
This paper bridges the gap in the literature between neural networks and probabilistic graphical mod...
The Free Energy Principle (FEP) postulates that biological agents perceive and interact with their e...
Contains fulltext : 83218.pdf (publisher's version ) (Open Access)The results in t...
This paper presents Variational Message Passing (VMP), a general purpose algorithm for applying vari...
Factor graphs provide a convenient framework for automatically generating (approximate) Bayesian inf...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
The free energy principle (FEP) offers a variational calculus-based description for how biological a...
nference methods are often formulated as variational approximations: these approxima-tions allow ...
Important inference problems in statistical physics, computer vision, error-correcting coding theory...
This paper applies the variational methods to learn the parameters and the probability of evidence o...
According to physics predictions, the free energy of random factor graph models that satisfy a certa...
The benefits of automating design cycles for Bayesian inference-based algorithms are becoming increa...
Accurate evaluation of Bayesian model evidence for a given data set is a fundamental problem in mode...
Model evidence is a fundamental performance measure in Bayesian machine learning as it represents ho...
This paper bridges the gap in the literature between neural networks and probabilistic graphical mod...
The Free Energy Principle (FEP) postulates that biological agents perceive and interact with their e...
Contains fulltext : 83218.pdf (publisher's version ) (Open Access)The results in t...
This paper presents Variational Message Passing (VMP), a general purpose algorithm for applying vari...
Factor graphs provide a convenient framework for automatically generating (approximate) Bayesian inf...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
The free energy principle (FEP) offers a variational calculus-based description for how biological a...
nference methods are often formulated as variational approximations: these approxima-tions allow ...
Important inference problems in statistical physics, computer vision, error-correcting coding theory...
This paper applies the variational methods to learn the parameters and the probability of evidence o...
According to physics predictions, the free energy of random factor graph models that satisfy a certa...
The benefits of automating design cycles for Bayesian inference-based algorithms are becoming increa...