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IJAR
2006

Operations for inference in continuous Bayesian networks with linear deterministic variables

14 years 18 days ago
Operations for inference in continuous Bayesian networks with linear deterministic variables
An important class of continuous Bayesian networks are those that have linear conditionally deterministic variables (a variable that is a linear deterministic function of its parents). In this case, the joint density function for the variables in the network does not exist. Conditional linear Gaussian (CLG) distributions can handle such cases when all variables are normally distributed. In this paper, we develop operations required for performing inference with linear conditionally deterministic variables in continuous Bayesian networks using relationships derived from joint cumulative distribution functions (CDF's). These methods allow inference in networks with linear deterministic variables and non-Gaussian distributions. Key words: Bayesian networks, conditional linear Gaussian models, deterministic variables PACS:
Barry R. Cobb, Prakash P. Shenoy
Added 12 Dec 2010
Updated 12 Dec 2010
Type Journal
Year 2006
Where IJAR
Authors Barry R. Cobb, Prakash P. Shenoy
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