New Mini-Bucket Partitioning Heuristics for Bounding the Probability of Evidence

Authors

  • Emma Rollon University of California, Irvine
  • Rina Dechter University of California, Irvine

DOI:

https://doi.org/10.1609/aaai.v24i1.7761

Keywords:

Probabilistic Inference, Bayesian Networks, Graphical Models

Abstract

Mini-Bucket Elimination (MBE) is a well-known approximation algorithm deriving lower and upper bounds on quantities of interest over graphical models. It relies on a procedure that partitions a set of functions, called bucket, into smaller subsets, called mini-buckets. The method has been used with a single partitioning heuristic throughout, so the impact of the partitioning algorithm on the quality of the generated bound has never been investigated. This paper addresses this issue by presenting a framework within which partitioning strategies can be described, analyzed and compared. We derive a new class of partitioning heuristics from first-principles geared for likelihood queries, demonstrate their impact on a number of benchmarks for probabilistic reasoning and show that the results are competitive (often superior) to state-of-the-art bounding schemes.

Downloads

Published

2010-07-04

How to Cite

Rollon, E., & Dechter, R. (2010). New Mini-Bucket Partitioning Heuristics for Bounding the Probability of Evidence. Proceedings of the AAAI Conference on Artificial Intelligence, 24(1), 1199-1204. https://doi.org/10.1609/aaai.v24i1.7761