Gaussian belief propagation (GaBP) is an iterative algorithm for computing the mean (and variances) of a multivariate Gaussian distribution, or equivalently, the minimum of a multivariate positive definite quadratic function. Sufficient conditions, such as walk-summability, that guarantee the convergence and correctness of GaBP are known, but GaBP may fail to converge to the correct solution given an arbitrary positive definite covariance matrix. As was observed by Malioutov et al. (2006), the GaBP algorithm fails to converge if the computation trees produced by the algorithm are not positive definite. In this work, we will show that the failure modes of the GaBP algorithm can be understood via graph covers, and we prove that a parameterize...
Abstract—We consider the estimation of an i.i.d. random vector observed through a linear transform f...
Distributed, iterative algorithms operating with minimal data structure while performing little comp...
We formulate the weighted b-matching objective function as a probability distribution function and p...
Gaussian belief propagation (BP) is known to be an efficient message-passing algorithm for calculati...
It is known that Gaussian belief propagation (BP) is a low-complexity algorithm for (approximately) ...
It is known that Gaussian belief propagation (BP) is a low-complexity algorithm for (approximately) ...
In order to compute the marginal distribution from a high dimensional distribution with loopy Gaussi...
We establish the convergence of the min-sum message passing algorithm for minimization of a quadrati...
In this paper, the paradigm of linear detection is being reformulated as a Gaussian belief propagati...
Abstract—In order to compute the marginal probability density function (PDF) with Gaussian belief pr...
Abstract — The canonical problem of solving a system of linear equations arises in numerous contexts...
Despite of its wide success in many distributed statistical learning applications, the well-known Ga...
Belief propagation (BP) is an efficient algorithm for calculating approximate marginal probability d...
We introduce a message passing belief propagation (BP) algorithm for factor graph over linear models...
Abstract—Inference problems in graphical models can be rep-resented as a constrained optimization of...
Abstract—We consider the estimation of an i.i.d. random vector observed through a linear transform f...
Distributed, iterative algorithms operating with minimal data structure while performing little comp...
We formulate the weighted b-matching objective function as a probability distribution function and p...
Gaussian belief propagation (BP) is known to be an efficient message-passing algorithm for calculati...
It is known that Gaussian belief propagation (BP) is a low-complexity algorithm for (approximately) ...
It is known that Gaussian belief propagation (BP) is a low-complexity algorithm for (approximately) ...
In order to compute the marginal distribution from a high dimensional distribution with loopy Gaussi...
We establish the convergence of the min-sum message passing algorithm for minimization of a quadrati...
In this paper, the paradigm of linear detection is being reformulated as a Gaussian belief propagati...
Abstract—In order to compute the marginal probability density function (PDF) with Gaussian belief pr...
Abstract — The canonical problem of solving a system of linear equations arises in numerous contexts...
Despite of its wide success in many distributed statistical learning applications, the well-known Ga...
Belief propagation (BP) is an efficient algorithm for calculating approximate marginal probability d...
We introduce a message passing belief propagation (BP) algorithm for factor graph over linear models...
Abstract—Inference problems in graphical models can be rep-resented as a constrained optimization of...
Abstract—We consider the estimation of an i.i.d. random vector observed through a linear transform f...
Distributed, iterative algorithms operating with minimal data structure while performing little comp...
We formulate the weighted b-matching objective function as a probability distribution function and p...