Directed Reduction Algorithms and Decomposable Graphs

03/27/2013
by   Ross D. Shachter, et al.
0

In recent years, there have been intense research efforts to develop efficient methods for probabilistic inference in probabilistic influence diagrams or belief networks. Many people have concluded that the best methods are those based on undirected graph structures, and that those methods are inherently superior to those based on node reduction operations on the influence diagram. We show here that these two approaches are essentially the same, since they are explicitly or implicity building and operating on the same underlying graphical structures. In this paper we examine those graphical structures and show how this insight can lead to an improved class of directed reduction methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

page 5

page 6

page 7

page 8

research
03/06/2013

Using Potential Influence Diagrams for Probabilistic Inference and Decision Making

The potential influence diagram is a generalization of the standard "con...
research
03/27/2013

DAVID: Influence Diagram Processing System for the Macintosh

Influence diagrams are a directed graph representation for uncertainties...
research
03/27/2013

A Method for Using Belief Networks as Influence Diagrams

This paper demonstrates a method for using belief-network algorithms to ...
research
01/30/2013

Probabilistic Inference in Influence Diagrams

This paper is about reducing influence diagram (ID) evaluation into Baye...
research
08/02/2016

Directed expected utility networks

A variety of statistical graphical models have been defined to represent...
research
03/13/2013

Structural Controllability and Observability in Influence Diagrams

Influence diagram is a graphical representation of belief networks with ...
research
03/27/2013

Interval Influence Diagrams

We describe a mechanism for performing probabilistic reasoning in influe...

Please sign up or login with your details

Forgot password? Click here to reset