Mean-Field Networks

10/21/2014
by   Yujia Li, et al.
0

The mean field algorithm is a widely used approximate inference algorithm for graphical models whose exact inference is intractable. In each iteration of mean field, the approximate marginals for each variable are updated by getting information from the neighbors. This process can be equivalently converted into a feedforward network, with each layer representing one iteration of mean field and with tied weights on all layers. This conversion enables a few natural extensions, e.g. untying the weights in the network. In this paper, we study these mean field networks (MFNs), and use them as inference tools as well as discriminative models. Preliminary experiment results show that MFNs can learn to do inference very efficiently and perform significantly better than mean field as discriminative models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/06/2022

Uniform-in-Time Propagation of Chaos for Mean Field Langevin Dynamics

We study the uniform-in-time propagation of chaos for mean field Langevi...
research
05/09/2012

Optimization of Structured Mean Field Objectives

In intractable, undirected graphical models, an intuitive way of creatin...
research
05/29/2022

Mean Field inference of CRFs based on GAT

In this paper we propose an improved mean-field inference algorithm for ...
research
10/01/2015

Clamping Improves TRW and Mean Field Approximations

We examine the effect of clamping variables for approximate inference in...
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
02/12/1999

An Efficient Mean Field Approach to the Set Covering Problem

A mean field feedback artificial neural network algorithm is developed a...
research
10/06/2021

Sharp Signal Detection Under Ferromagnetic Ising Models

In this paper we study the effect of dependence on detecting a class of ...

Please sign up or login with your details

Forgot password? Click here to reset