Using Tree-Decomposable Structures to Approximate Belief Networks

03/06/2013
by   Sumit Sarkar, et al.
0

Tree structures have been shown to provide an efficient framework for propagating beliefs [Pearl,1986]. This paper studies the problem of finding an optimal approximating tree. The star decomposition scheme for sets of three binary variables [Lazarsfeld,1966; Pearl,1986] is shown to enhance the class of probability distributions that can support tree structures; such structures are called tree-decomposable structures. The logarithm scoring rule is found to be an appropriate optimality criterion to evaluate different tree-decomposable structures. Characteristics of such structures closest to the actual belief network are identified using the logarithm rule, and greedy and exact techniques are developed to find the optimal approximation.

READ FULL TEXT

page 1

page 2

page 3

page 4

page 5

page 6

page 7

research
03/27/2013

Is Shafer General Bayes?

This paper examines the relationship between Shafer's belief functions a...
research
03/27/2013

Minimum Error Tree Decomposition

This paper describes a generalization of previous methods for constructi...
research
02/27/2013

Optimal Junction Trees

The paper deals with optimality issues in connection with updating belie...
research
07/25/2020

Information Fusion on Belief Networks

This paper will focus on the process of 'fusing' several observations or...
research
11/23/2021

Generating Tree Structures for Hyperbolic Tessellations

We show an efficient algorithm for generating geodesic regular tree stru...
research
10/27/2016

Optimal Belief Approximation

In Bayesian statistics probability distributions express beliefs. Howeve...
research
02/27/2013

An Evaluation of an Algorithm for Inductive Learning of Bayesian Belief Networks Usin

Bayesian learning of belief networks (BLN) is a method for automatically...

Please sign up or login with your details

Forgot password? Click here to reset