International audienceA number of problems in statistical physics and computer science can be expressed as the computation of marginal probabilities over a Markov random field. Belief propagation, an iterative message-passing algorithm, computes exactly such marginals when the underlying graph is a tree. But it has gained its popularity as an efficient way to approximate them in the more general case, even if it can exhibits multiple fixed points and is not guaranteed to converge. In this paper, we express a new sufficient condition for local stability of a belief propagation fixed point in terms of the graph structure and the beliefs values at the fixed point. This gives credence to the usual understanding that Belief Propagation performs ...
Local "belief propagation " rules of the sort proposed by Pearl [15] are guaranteed to con...
Distributed, iterative algorithms operating with minimal data structure while performing little comp...
Belief Propagation (BP) is a widely used approximation for exact probabilistic inference in graphica...
International audienceA number of problems in statistical physics and computer science can be expres...
An important part of problems in statistical physics and computer science can be expressed as the co...
Belief propagation (BP) was only supposed to work for tree-like networks but works surprisingly well...
Important inference problems in statistical physics, computer vision, error-correcting coding theory...
We present new message passing algorithms for performing inference with graphical models. Our method...
Abstract — Message passing algorithms have proved surprisingly successful in solving hard constraint...
Probabilistic inference in Bayesian networks, and even reasoning within error bounds are known to be...
When belief propagation (BP) converges, it does so to a stationary point of the Bethe free energy F,...
This thesis addresses the problem of inference in factor graphs, especially the LDPC codes, almost s...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
Many problems require repeated inference on probabilistic graphical models, with different values fo...
Tree-reweighted belief propagation is a message passing method that has certain advantages compared ...
Local "belief propagation " rules of the sort proposed by Pearl [15] are guaranteed to con...
Distributed, iterative algorithms operating with minimal data structure while performing little comp...
Belief Propagation (BP) is a widely used approximation for exact probabilistic inference in graphica...
International audienceA number of problems in statistical physics and computer science can be expres...
An important part of problems in statistical physics and computer science can be expressed as the co...
Belief propagation (BP) was only supposed to work for tree-like networks but works surprisingly well...
Important inference problems in statistical physics, computer vision, error-correcting coding theory...
We present new message passing algorithms for performing inference with graphical models. Our method...
Abstract — Message passing algorithms have proved surprisingly successful in solving hard constraint...
Probabilistic inference in Bayesian networks, and even reasoning within error bounds are known to be...
When belief propagation (BP) converges, it does so to a stationary point of the Bethe free energy F,...
This thesis addresses the problem of inference in factor graphs, especially the LDPC codes, almost s...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
Many problems require repeated inference on probabilistic graphical models, with different values fo...
Tree-reweighted belief propagation is a message passing method that has certain advantages compared ...
Local "belief propagation " rules of the sort proposed by Pearl [15] are guaranteed to con...
Distributed, iterative algorithms operating with minimal data structure while performing little comp...
Belief Propagation (BP) is a widely used approximation for exact probabilistic inference in graphica...