Title of article :
Modelling and inference with Conditional Gaussian Probabilistic Decision Graphs Original Research Article
Author/Authors :
Jens D. Nielsen، نويسنده , , José A. G?mez، نويسنده , , Antonio Salmer?n، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Pages :
17
From page :
929
To page :
945
Abstract :
Probabilistic Decision Graphs (PDGs) are probabilistic graphical models that represent a factorisation of a discrete joint probability distribution using a “decision graph”-like structure over local marginal parameters. The structure of a PDG enables the model to capture some context specific independence relations that are not representable in the structure of more commonly used graphical models such as Bayesian networks and Markov networks. This sometimes makes operations in PDGs more efficient than in alternative models. PDGs have previously been defined only in the discrete case, assuming a multinomial joint distribution over the variables in the model. We extend PDGs to incorporate continuous variables, by assuming a Conditional Gaussian (CG) joint distribution. We also show how inference can be carried out in an efficient way.
Keywords :
Conditional Gaussian distribution , Probabilistic Decision Graphs , Hybrid graphical models , Inference
Journal title :
International Journal of Approximate Reasoning
Serial Year :
2012
Journal title :
International Journal of Approximate Reasoning
Record number :
1183177
Link To Document :
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