Bucket Elimination: A Unifying Framework for Several Probabilistic Inference

02/13/2013
by   Rina Dechter, et al.
0

Probabilistic inference algorithms for finding the most probable explanation, the maximum aposteriori hypothesis, and the maximum expected utility and for updating belief are reformulated as an elimination--type algorithm called bucket elimination. This emphasizes the principle common to many of the algorithms appearing in that literature and clarifies their relationship to nonserial dynamic programming algorithms. We also present a general way of combining conditioning and elimination within this framework. Bounds on complexity are given for all the algorithms as a function of the problem's structure.

READ FULL TEXT

page 1

page 4

research
02/06/2013

A Scheme for Approximating Probabilistic Inference

This paper describes a class of probabilistic approximation algorithms b...
research
07/04/2012

The Relationship Between AND/OR Search and Variable Elimination

In this paper we compare search and inference in graphical models throug...
research
03/15/2012

BEEM : Bucket Elimination with External Memory

A major limitation of exact inference algorithms for probabilistic graph...
research
02/14/2012

Probabilistic Theorem Proving

Many representation schemes combining first-order logic and probability ...
research
04/18/2013

Feature Elimination in Kernel Machines in moderately high dimensions

We develop an approach for feature elimination in statistical learning w...
research
12/28/2018

Task Elimination may Actually Increase Throughput Time

The well-known Task Elimination redesign principle suggests to remove un...
research
09/27/2018

Smoothed Analysis of Edge Elimination for Euclidean TSP

One way to speed up the calculation of optimal TSP tours in practice is ...

Please sign up or login with your details

Forgot password? Click here to reset