arXiv Analytics

Sign in

arXiv:1801.06430 [cs.IT]AbstractReferencesReviewsResources

Convergence Analysis of Belief Propagation on Gaussian Graphical Models

Jian Du, Shaodan Ma, Yik-Chung Wu, Soummya Kar, José M. F. Moura

Published 2018-01-17Version 1

Gaussian belief propagation (GBP) is a recursive computation method that is widely used in inference for computing marginal distributions efficiently. Depending on how the factorization of the underlying joint Gaussian distribution is performed, GBP may exhibit different convergence properties as different factorizations may lead to fundamentally different recursive update structures. In this paper, we study the convergence of GBP derived from the factorization based on the distributed linear Gaussian model. The motivation is twofold. From the factorization viewpoint, i.e., by specifically employing a factorization based on the linear Gaussian model, in some cases, we are able to bypass difficulties that exist in other convergence analysis methods that use a different (Gaussian Markov random field) factorization. From the distributed inference viewpoint, the linear Gaussian model readily conforms to the physical network topology arising in large-scale networks, and, is practically useful. For the distributed linear Gaussian model, under mild assumptions, we show analytically three main results: the GBP message inverse variance converges exponentially fast to a unique positive limit for arbitrary nonnegative initialization; we provide a necessary and sufficient convergence condition for the belief mean to converge to the optimal value; and, when the underlying factor graph is given by the union of a forest and a single loop, we show that GBP always converges.

Comments: arXiv admin note: text overlap with arXiv:1611.02010
Categories: cs.IT, math.IT
Related articles: Most relevant | Search more
arXiv:1001.5073 [cs.IT] (Published 2010-01-28)
Sparse Recovery using Smoothed $\ell^0$ (SL0): Convergence Analysis
arXiv:1001.2228 [cs.IT] (Published 2010-01-13, updated 2010-05-18)
Estimation with Random Linear Mixing, Belief Propagation and Compressed Sensing
arXiv:0905.4545 [cs.IT] (Published 2009-05-28)
Minimum Distance and Convergence Analysis of Hamming-Accumulate-Acccumulate Codes