Loopy belief propagation performs approximate inference on graphical models with loops. One might hope to compensate for the approximation by adjusting model parameters. Learning algorithms for this purpose have been explored previously, and the claim has been made that every set of locally consistent marginals can arise from belief propagation run on a graphical model. On the contrary, here we show that many probability distributions have marginals that cannot be reached by belief propagation using any set of model parameters or any learning algorithm. We call such marginals `unbelievable.' This problem occurs whenever the Hessian of the Bethe free energy is not positive-definite at the target marginals. All learning algorithms for belief ...
It is well known that loopy Belief propagation (LBP) performs poorly on probabilistic graphi-cal mod...
Belief propagation (BP) is an increasingly popular method of performing approximate inference on arb...
We propose a novel bound on single-variable marginal probability distributions in factor graphs with...
Loopy belief propagation performs approximate inference on graphical models with loops. One might ho...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
We consider loopy belief propagation for approximate inference in probabilistic graphical models. A ...
Belief propagation (BP) was only supposed to work for tree-like networks but works surprisingly well...
Consider the inference problem of undirected graphical models[8, 9]. When the graph is tree, the Bel...
An important part of problems in statistical physics and computer science can be expressed as the co...
We present new message passing algorithms for performing inference with graphical models. Our method...
Exact marginal inference in continuous graphical models is computationally challenging outside of a ...
Traditional learning methods for training Markov random fields require doing inference over all vari...
Many problems require repeated inference on probabilistic graphical models, with different values fo...
Important inference problems in statistical physics, computer vision, error-correcting coding theory...
Graphical models, such as Bayesian networks and Markov random fields represent statistical dependenc...
It is well known that loopy Belief propagation (LBP) performs poorly on probabilistic graphi-cal mod...
Belief propagation (BP) is an increasingly popular method of performing approximate inference on arb...
We propose a novel bound on single-variable marginal probability distributions in factor graphs with...
Loopy belief propagation performs approximate inference on graphical models with loops. One might ho...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
We consider loopy belief propagation for approximate inference in probabilistic graphical models. A ...
Belief propagation (BP) was only supposed to work for tree-like networks but works surprisingly well...
Consider the inference problem of undirected graphical models[8, 9]. When the graph is tree, the Bel...
An important part of problems in statistical physics and computer science can be expressed as the co...
We present new message passing algorithms for performing inference with graphical models. Our method...
Exact marginal inference in continuous graphical models is computationally challenging outside of a ...
Traditional learning methods for training Markov random fields require doing inference over all vari...
Many problems require repeated inference on probabilistic graphical models, with different values fo...
Important inference problems in statistical physics, computer vision, error-correcting coding theory...
Graphical models, such as Bayesian networks and Markov random fields represent statistical dependenc...
It is well known that loopy Belief propagation (LBP) performs poorly on probabilistic graphi-cal mod...
Belief propagation (BP) is an increasingly popular method of performing approximate inference on arb...
We propose a novel bound on single-variable marginal probability distributions in factor graphs with...