Publication | Closed Access
Approximate inference for infinite contingent Bayesian networks
39
Citations
10
References
2005
Year
Unknown Venue
In many practical problems---from tracking aircraft based on radar data to building a bibliographic database based on citation lists---we want to reason about an unbounded number of unseen objects with unknown relations among them. Bayesian networks, which define a fixed dependency structure on a finite set of variables, are not the ideal representation language for this task. This paper introduces contingent Bayesian networks (CBNs), which represent uncertainty about dependencies by labeling each edge with a condition under which it is active. A CBN may contain cycles and have infinitely many variables.
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