Hybrid Bayesian Networks with Linear Deterministic Variables

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Issue Date
2005-07Author
Cobb, Barry R.
Shenoy, Prakash P.
Publisher
Association for Uncertainty in Artificial Intelligence
Format
504200 bytes
Type
Book chapter
Metadata
Show full item recordAbstract
When a hybrid Bayesian network has conditionally
deterministic variables with continuous parents, the joint density function for the continuous variables does not exist. Conditional linear Gaussian distributions can handle such cases when the continuous variables have a multi-variate normal distribution and the discrete variables do not have continuous parents. In this paper, operations required for performing inference with
conditionally deterministic variables in hybrid Bayesian networks are developed. These methods allow inference in networks with deterministic
variables where continuous variables may be non-Gaussian, and their density functions can be approximated by mixtures of truncated exponentials. There are no constraints on the placement of continuous and discrete nodes in the network.
ISBN
0-9749039-1-4Collections
Citation
Cobb, B. R. and P. P. Shenoy (2005), "Hybrid Bayesian networks with linear deterministic variables," in F. Bacchus and T. Jaakkola (eds.), Uncertainty in Artificial Intelligence: Proceedings of the Twenty-First Conference (UAI-05), pp. 136--144, AUAI Press, Corvallis, OR.
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