Walk-Sums and Belief Propagation in Gaussian Graphical Models
Abstract
We present a new framework based on walks in a graph for analysis and inference in Gaussian graphical models. The key idea is to decompose the correlation between each pair of variables as a sum over all walks between those variables in the graph. The weight of each walk is given by a product of edgewise partial correlation coefficients. This representation holds for a large class of Gaussian graphical models which we call walk-summable. We give a precise characterization of this class of models, and relate it to other classes including diagonally dominant, attractive, non-frustrated, and pairwise-normalizable. We provide a walk-sum interpretation of Gaussian belief propagation in trees and of the approximate method of loopy belief propagation in graphs with cycles. The walk-sum perspective leads to a better understanding of Gaussian belief propagation and to stronger results for its convergence in loopy graphs.
Cite
Text
Malioutov et al. "Walk-Sums and Belief Propagation in Gaussian Graphical Models." Journal of Machine Learning Research, 2006.Markdown
[Malioutov et al. "Walk-Sums and Belief Propagation in Gaussian Graphical Models." Journal of Machine Learning Research, 2006.](https://mlanthology.org/jmlr/2006/malioutov2006jmlr-walksums/)BibTeX
@article{malioutov2006jmlr-walksums,
title = {{Walk-Sums and Belief Propagation in Gaussian Graphical Models}},
author = {Malioutov, Dmitry M. and Johnson, Jason K. and Willsky, Alan S.},
journal = {Journal of Machine Learning Research},
year = {2006},
pages = {2031-2064},
volume = {7},
url = {https://mlanthology.org/jmlr/2006/malioutov2006jmlr-walksums/}
}