Mean Field Methods for a Special Class of Belief Networks

06/01/2011
by   C. Bhattacharyya, et al.
0

The chief aim of this paper is to propose mean-field approximations for a broad class of Belief networks, of which sigmoid and noisy-or networks can be seen as special cases. The approximations are based on a powerful mean-field theory suggested by Plefka. We show that Saul, Jaakkola and Jordan' s approach is the first order approximation in Plefka's approach, via a variational derivation. The application of Plefka's theory to belief networks is not computationally tractable. To tackle this problem we propose new approximations based on Taylor series. Small scale experiments show that the proposed schemes are attractive.

READ FULL TEXT

page 17

page 18

research
01/16/2013

Variational Approximations between Mean Field Theory and the Junction Tree Algorithm

Recently, variational approximations such as the mean field approximatio...
research
02/14/2012

Factored Filtering of Continuous-Time Systems

We consider filtering for a continuous-time, or asynchronous, stochastic...
research
07/10/2012

Comparative Study for Inference of Hidden Classes in Stochastic Block Models

Inference of hidden classes in stochastic block model is a classical pro...
research
03/29/2018

Copula Variational Bayes inference via information geometry

Variational Bayes (VB), also known as independent mean-field approximati...
research
08/22/2018

Mean-field approximation, convex hierarchies, and the optimality of correlation rounding: a unified perspective

The free energy is a key quantity of interest in Ising models, but unfor...
research
05/26/2016

Adiabatic Persistent Contrastive Divergence Learning

This paper studies the problem of parameter learning in probabilistic gr...
research
08/25/2020

Rate Equations for Graphs

In this paper, we combine ideas from two different scientific traditions...

Please sign up or login with your details

Forgot password? Click here to reset