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UAI
1992

Exploring Localization in Bayesian Networks for Large Expert Systems

13 years 5 months ago
Exploring Localization in Bayesian Networks for Large Expert Systems
Current Bayesian net representations do not consider structure in the domain and include all variables in a homogeneous network. At any time, a human reasoner in a large domain may direct his attention to only one of a number of natural subdomains, i.e., there is `localization' of queries and evidence. In such a case, propagating evidence through a homogeneous network is inefficient since the entire network has to be updated each time. This paper presents multiply sectioned Bayesian networks that enable a (localization preserving) representation of natural subdomains by separate Bayesian subnets. The subnets are transformed into a set of permanent junction trees such that evidential reasoning takes place at only one of them at a time. Probabilities obtained are identical to those that would be obtained from the homogeneous network. We discuss attention shift to a different junction tree and propagation of previously acquired evidence. Although the overall system can be large, com...
Yang Xiang, David Poole, Michael P. Beddoes
Added 07 Nov 2010
Updated 07 Nov 2010
Type Conference
Year 1992
Where UAI
Authors Yang Xiang, David Poole, Michael P. Beddoes
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