Accuracy Bounds for Belief Propagation

06/20/2012
by   Alexander T. Ihler, et al.
0

The belief propagation (BP) algorithm is widely applied to perform approximate inference on arbitrary graphical models, in part due to its excellent empirical properties and performance. However, little is known theoretically about when this algorithm will perform well. Using recent analysis of convergence and stability properties in BP and new results on approximations in binary systems, we derive a bound on the error in BP's estimates for pairwise Markov random fields over discrete valued random variables. Our bound is relatively simple to compute, and compares favorably with a previous method of bounding the accuracy of BP.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/27/2020

α Belief Propagation for Approximate Inference

Belief propagation (BP) algorithm is a widely used message-passing metho...
research
04/21/2020

Rigorous Explanation of Inference on Probabilistic Graphical Models

Probabilistic graphical models, such as Markov random fields (MRF), expl...
research
11/09/2018

Block Belief Propagation for Parameter Learning in Markov Random Fields

Traditional learning methods for training Markov random fields require d...
research
06/18/2012

A Generalized Loop Correction Method for Approximate Inference in Graphical Models

Belief Propagation (BP) is one of the most popular methods for inference...
research
04/10/2020

Modeling and Mitigating Errors in Belief Propagation for Distributed Detection

We study the behavior of the belief-propagation (BP) algorithm affected ...
research
03/13/2020

Belief Propagation Reloaded: Learning BP-Layers for Labeling Problems

It has been proposed by many researchers that combining deep neural netw...
research
02/11/2016

Optimal Inference in Crowdsourced Classification via Belief Propagation

Crowdsourcing systems are popular for solving large-scale labelling task...

Please sign up or login with your details

Forgot password? Click here to reset