A Noisy-OR Model for Continuous Time Bayesian Networks

Perreault, Logan (Montana State University) | Strasser, Shane (Montana State University) | Thornton, Monica (Montana State University) | Sheppard, John (Montana State University)

AAAI Conferences 

A continuous time Bayesian network is a graphical model capable of describing discrete state systems that evolve in continuous time. Unfortunately, the number of parameters required for each node in the graph is exponential in the number of parents of the node, which can be prohibitively large for many real-world systems. To mitigate this problem, we propose a Noisy-OR model for continuous time Bayesian networks, which can reduce the number of required parameters from exponential to linear. We describe the model, as well as the process required to compute the remaining unspecified parameters. Finally, we experimentally validate the correctness of the proposed Noisy-OR formulation.

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