Title of article :
Bayesian networks for mathematical models: Techniques for automatic construction and efficient inference Original Research Article
Author/Authors :
Catherine G. Enright، نويسنده , , Michael G. Madden، نويسنده , , Niall Madden، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Pages :
20
From page :
323
To page :
342
Abstract :
Expert knowledge in the form of mathematical models can be considered sufficient statistics of all prior experimentation in the domain, embodying generic or abstract knowledge of it. When used in a probabilistic framework, such models provide a sound foundation for data mining, inference, and decision making under uncertainty.We describe a methodology for encapsulating knowledge in the form of ordinary differential equations (ODEs) in dynamic Bayesian networks (DBNs). The resulting DBN framework can handle both data and model uncertainty in a principled manner, can be used for temporal data mining with noisy and missing data, and can be used to re-estimate model parameters automatically using data streams. A standard assumption when performing inference in DBNs is that time steps are fixed. Generally, the time step chosen is small enough to capture the dynamics of the most rapidly changing variable. This can result in DBNs having a natural time step that is very short, leading to inefficient inference; this is particularly an issue for DBNs derived from ODEs and for systems where the dynamics are not uniform over time.
Keywords :
Ordinary differential equations , Dynamic Bayesian networks , Adaptive time stepping , Particle Filtering
Journal title :
International Journal of Approximate Reasoning
Serial Year :
2013
Journal title :
International Journal of Approximate Reasoning
Record number :
1183266
Link To Document :
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