Abstract. The cluster variation method has been developed into a general theoretical framework for treating short-range correlations in many-body systems after it was first proposed by Kikuchi in 1951. On the numerical side, a message-passing approach called generalized belief propagation (GBP) was proposed by Yedidia, Freeman and Weiss about a decade ago as a way of computing the minimal value of the cluster variational free energy and the marginal distributions of clusters of variables. However the GBP equations are often redundant, and it is quite a non-trivial task to make the GBP iteration converges to a fixed point. These drawbacks hinder the application of the GBP approach to finite-dimensional frustrated and disordered systems. In t...
This thesis addresses the problem of inference in factor graphs, especially the LDPC codes, almost s...
We continue our numerical study of quantum belief propagation initiated in [Phys. Rev. A 77, 052318 ...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
AbstractA new approximation of the cluster variational method is introduced for the three-dimensiona...
We study the performance of different message passing algorithms in the two-dimensional Edwards-Ande...
Important inference problems in statistical physics, computer vision, error-correcting coding theory...
A new approximation of the cluster variational method is introduced for the three-dimensional Ising ...
Belief propagation (BP) is a message-passing method for solving probabilistic graphical models. It i...
Abstract. Disordered and frustrated graphical systems are ubiquitous in physics, biology, and inform...
The Belief Propagation algorithm is a popular technique of solving inference problems for different ...
We first present an empirical study of the Belief Propagation (BP) algorithm, when run on the random...
Belief propagation (BP) was only supposed to work for tree-like networks but works surprisingly well...
Replica-Symmetry-Breaking ansatz in the context of Kikuchi’s Cluster Variational Method (CVM). Using...
Mean field-like approximations (including naive mean-field, Bethe and Kikuchi and more general clust...
Computing partition function is the most important statistical inference task arising in application...
This thesis addresses the problem of inference in factor graphs, especially the LDPC codes, almost s...
We continue our numerical study of quantum belief propagation initiated in [Phys. Rev. A 77, 052318 ...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
AbstractA new approximation of the cluster variational method is introduced for the three-dimensiona...
We study the performance of different message passing algorithms in the two-dimensional Edwards-Ande...
Important inference problems in statistical physics, computer vision, error-correcting coding theory...
A new approximation of the cluster variational method is introduced for the three-dimensional Ising ...
Belief propagation (BP) is a message-passing method for solving probabilistic graphical models. It i...
Abstract. Disordered and frustrated graphical systems are ubiquitous in physics, biology, and inform...
The Belief Propagation algorithm is a popular technique of solving inference problems for different ...
We first present an empirical study of the Belief Propagation (BP) algorithm, when run on the random...
Belief propagation (BP) was only supposed to work for tree-like networks but works surprisingly well...
Replica-Symmetry-Breaking ansatz in the context of Kikuchi’s Cluster Variational Method (CVM). Using...
Mean field-like approximations (including naive mean-field, Bethe and Kikuchi and more general clust...
Computing partition function is the most important statistical inference task arising in application...
This thesis addresses the problem of inference in factor graphs, especially the LDPC codes, almost s...
We continue our numerical study of quantum belief propagation initiated in [Phys. Rev. A 77, 052318 ...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...