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Conditioning graphs: practical structures for inference in bayesian networks

Published: 05 December 2005 Publication History

Abstract

Programmers employing inference in Bayesian networks typically rely on the inclusion of the model as well as an inference engine into their application. Sophisticated inference engines require non-trivial amounts of space and are also difficult to implement. This limits their use in some applications that would otherwise benefit from probabilistic inference. This paper presents a system that minimizes the space requirement of the model. The inference engine is sufficiently simple as to avoid space-limitation and be easily implemented in almost any environment. We show a fast, compact indexing structure that is linear in the size of the network. The additional space required to compute over the model is linear in the number of variables in the network.

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Cited By

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  • (2010)On the structure of elimination trees for Bayesian network inferenceProceedings of the 9th Mexican international conference on Artificial intelligence conference on Advances in soft computing: Part II10.5555/1927099.1927121(208-220)Online publication date: 8-Nov-2010
  • (2009)Methods for constructing balanced elimination trees and other recursive decompositionsInternational Journal of Approximate Reasoning10.1016/j.ijar.2009.04.01050:9(1416-1424)Online publication date: 1-Nov-2009
  • (2006)Exploiting dynamic independence in a static conditioning graphProceedings of the 19th international conference on Advances in Artificial Intelligence: Canadian Society for Computational Studies of Intelligence10.1007/11766247_18(206-217)Online publication date: 7-Jun-2006

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Information & Contributors

Information

Published In

cover image Guide Proceedings
AI'05: Proceedings of the 18th Australian Joint conference on Advances in Artificial Intelligence
December 2005
1344 pages
ISBN:3540304622
  • Editors:
  • Shichao Zhang,
  • Ray Jarvis

Sponsors

  • University of Technology, Sydney: University of Technology, Sydney

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Springer-Verlag

Berlin, Heidelberg

Publication History

Published: 05 December 2005

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Cited By

View all
  • (2010)On the structure of elimination trees for Bayesian network inferenceProceedings of the 9th Mexican international conference on Artificial intelligence conference on Advances in soft computing: Part II10.5555/1927099.1927121(208-220)Online publication date: 8-Nov-2010
  • (2009)Methods for constructing balanced elimination trees and other recursive decompositionsInternational Journal of Approximate Reasoning10.1016/j.ijar.2009.04.01050:9(1416-1424)Online publication date: 1-Nov-2009
  • (2006)Exploiting dynamic independence in a static conditioning graphProceedings of the 19th international conference on Advances in Artificial Intelligence: Canadian Society for Computational Studies of Intelligence10.1007/11766247_18(206-217)Online publication date: 7-Jun-2006

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