We apply belief propagation to a Bayesian bipartite graph composed of discrete independent hidden variables and discrete visible variables. The network is the Discrete counterpart of Independent Component Analysis (DICA) and it is manipulated in a factor graph form for inference and learning. A full set of simulations is reported for character images from the MNIST dataset. The results show that the factorial code implemented by the sources contributes to build a good generative model for the data that can be used in various inference modes
AbstractThis paper explores the role of independence of causal influence (ICI) in Bayesian network i...
This paper explores the role of independence of causal influence (ICI) in Bayesian network inference...
Belief propagation over pairwise connected Markov Random Fields has become a widely used approach, a...
We apply belief propagation to a Bayesian bipartite graph composed of discrete independent hidden va...
Factor graphs provide a convenient framework for automatically generating (approximate) Bayesian inf...
Probabilistic graphical models are a statistical framework of conditional dependent random variables...
Probabilistic inference in Bayesian networks, and even reasoning within error bounds are known to be...
We build a multi-layer architecture using the Bayesian framework of the Factor Graphs in Reduced Nor...
Belief propagation over pairwise connected Markov Random Fields has become a widely used approach, a...
A latent variable generative model with finite noise is used to describe several different algorithm...
This tutorial provides an overview of Bayesian belief networks. The sub-ject is introduced through a...
Belief propagation over pairwise-connected Markov random fields has become a widely used approach, a...
In modeling time series, convolution multi-layer graphs are able to capture long-term dependence at ...
AbstractA Bayesian belief net is a factored representation for a joint probability distribution over...
This tutorial provides an overview of Bayesian belief networks. The sub-ject is introduced through a...
AbstractThis paper explores the role of independence of causal influence (ICI) in Bayesian network i...
This paper explores the role of independence of causal influence (ICI) in Bayesian network inference...
Belief propagation over pairwise connected Markov Random Fields has become a widely used approach, a...
We apply belief propagation to a Bayesian bipartite graph composed of discrete independent hidden va...
Factor graphs provide a convenient framework for automatically generating (approximate) Bayesian inf...
Probabilistic graphical models are a statistical framework of conditional dependent random variables...
Probabilistic inference in Bayesian networks, and even reasoning within error bounds are known to be...
We build a multi-layer architecture using the Bayesian framework of the Factor Graphs in Reduced Nor...
Belief propagation over pairwise connected Markov Random Fields has become a widely used approach, a...
A latent variable generative model with finite noise is used to describe several different algorithm...
This tutorial provides an overview of Bayesian belief networks. The sub-ject is introduced through a...
Belief propagation over pairwise-connected Markov random fields has become a widely used approach, a...
In modeling time series, convolution multi-layer graphs are able to capture long-term dependence at ...
AbstractA Bayesian belief net is a factored representation for a joint probability distribution over...
This tutorial provides an overview of Bayesian belief networks. The sub-ject is introduced through a...
AbstractThis paper explores the role of independence of causal influence (ICI) in Bayesian network i...
This paper explores the role of independence of causal influence (ICI) in Bayesian network inference...
Belief propagation over pairwise connected Markov Random Fields has become a widely used approach, a...