We present a joint message passing approach that combines belief propagation and the mean field approximation. Our analysis is based on the region-based free energy approximation method proposed by Yedidia et al., which allows to use the same objective function (Kullback-Leibler divergence) as a starting point. In this method message passing fixed point equations (which correspond to the update rules in a message passing algorithm) are then obtained by imposing different region-based approximations and constraints on the mean field and belief propagation parts of the corresponding factor graph. Our results can be applied, for example, to algorithms that perform joint channel estimation and decoding in iterative receivers. This is demonstrat...
We study the performance of different message passing algorithms in the two-dimensional Edwards-Ande...
Over the last decade or so, Approximate Message Passing (AMP) algorithms have become extremely popul...
Distributed, iterative algorithms operating with minimal data structure while performing little comp...
Abstract-We present a joint message passing approach that combines belief propagation and the mean f...
We present a joint message passing approach that combines belief propagation and the mean field appr...
Merging belief propagation and the mean field approximation: A free energy approac
We design iterative receiver schemes for a generic communication system by treating channel estimati...
Important inference problems in statistical physics, computer vision, error-correcting coding theory...
Belief propagation (BP) was only supposed to work for tree-like networks but works surprisingly well...
Abstract—Inference problems in graphical models can be rep-resented as a constrained optimization of...
In this study, the authors investigate the use of combined belief propagation (BP), mean field (MF) ...
The chief aim of this paper is to propose mean-field approximations for a broad class of Belief ne...
We introduce a message passing belief propagation (BP) algorithm for factor graph over linear models...
We study the problem of joint channel estimation and detection in MIMO systems using belief propagat...
We propose a theoretical framework for non redundant reconstruction of a global loss from a collecti...
We study the performance of different message passing algorithms in the two-dimensional Edwards-Ande...
Over the last decade or so, Approximate Message Passing (AMP) algorithms have become extremely popul...
Distributed, iterative algorithms operating with minimal data structure while performing little comp...
Abstract-We present a joint message passing approach that combines belief propagation and the mean f...
We present a joint message passing approach that combines belief propagation and the mean field appr...
Merging belief propagation and the mean field approximation: A free energy approac
We design iterative receiver schemes for a generic communication system by treating channel estimati...
Important inference problems in statistical physics, computer vision, error-correcting coding theory...
Belief propagation (BP) was only supposed to work for tree-like networks but works surprisingly well...
Abstract—Inference problems in graphical models can be rep-resented as a constrained optimization of...
In this study, the authors investigate the use of combined belief propagation (BP), mean field (MF) ...
The chief aim of this paper is to propose mean-field approximations for a broad class of Belief ne...
We introduce a message passing belief propagation (BP) algorithm for factor graph over linear models...
We study the problem of joint channel estimation and detection in MIMO systems using belief propagat...
We propose a theoretical framework for non redundant reconstruction of a global loss from a collecti...
We study the performance of different message passing algorithms in the two-dimensional Edwards-Ande...
Over the last decade or so, Approximate Message Passing (AMP) algorithms have become extremely popul...
Distributed, iterative algorithms operating with minimal data structure while performing little comp...