Expectation Propagation for approximate Bayesian inference

01/10/2013
by   Thomas P. Minka, et al.
0

This paper presents a new deterministic approximation technique in Bayesian networks. This method, "Expectation Propagation", unifies two previous techniques: assumed-density filtering, an extension of the Kalman filter, and loopy belief propagation, an extension of belief propagation in Bayesian networks. All three algorithms try to recover an approximate distribution which is close in KL divergence to the true distribution. Loopy belief propagation, because it propagates exact belief states, is useful for a limited class of belief networks, such as those which are purely discrete. Expectation Propagation approximates the belief states by only retaining certain expectations, such as mean and variance, and iterates until these expectations are consistent throughout the network. This makes it applicable to hybrid networks with discrete and continuous nodes. Expectation Propagation also extends belief propagation in the opposite direction - it can propagate richer belief states that incorporate correlations between nodes. Experiments with Gaussian mixture models show Expectation Propagation to be convincingly better than methods with similar computational cost: Laplace's method, variational Bayes, and Monte Carlo. Expectation Propagation also provides an efficient algorithm for training Bayes point machine classifiers.

READ FULL TEXT
research
12/12/2012

Expectation Propogation for approximate inference in dynamic Bayesian networks

We describe expectation propagation for approximate inference in dynamic...
research
04/18/2012

Message passing with relaxed moment matching

Bayesian learning is often hampered by large computational expense. As a...
research
09/22/2014

Expectation Propagation

Variational inference is a powerful concept that underlies many iterativ...
research
01/10/2013

Inference in Hybrid Networks: Theoretical Limits and Practical Algorithms

An important subclass of hybrid Bayesian networks are those that represe...
research
12/16/2010

Fast Convergent Algorithms for Expectation Propagation Approximate Bayesian Inference

We propose a novel algorithm to solve the expectation propagation relaxa...
research
01/30/2014

Exploiting Causality for Selective Belief Filtering in Dynamic Bayesian Networks

Dynamic Bayesian networks (DBNs) are a general model for stochastic proc...
research
11/14/2016

On numerical approximation schemes for expectation propagation

Several numerical approximation strategies for the expectation-propagati...

Please sign up or login with your details

Forgot password? Click here to reset