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Probabilistic Independence Networks for Hidden Markov Probability Models

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dc.creator Smyth, Padhraic
dc.creator Heckerman, David
dc.creator Jordan, Michael
dc.date 2004-10-20T20:49:09Z
dc.date 2004-10-20T20:49:09Z
dc.date 1996-03-13
dc.date.accessioned 2013-10-09T02:48:29Z
dc.date.available 2013-10-09T02:48:29Z
dc.date.issued 2013-10-09
dc.identifier AIM-1565
dc.identifier CBCL-132
dc.identifier http://hdl.handle.net/1721.1/7185
dc.identifier.uri http://koha.mediu.edu.my:8181/xmlui/handle/1721
dc.description Graphical techniques for modeling the dependencies of randomvariables have been explored in a variety of different areas includingstatistics, statistical physics, artificial intelligence, speech recognition, image processing, and genetics.Formalisms for manipulating these models have been developedrelatively independently in these research communities. In this paper weexplore hidden Markov models (HMMs) and related structures within the general framework of probabilistic independencenetworks (PINs). The paper contains a self-contained review of the basic principles of PINs.It is shown that the well-known forward-backward (F-B) and Viterbialgorithms for HMMs are special cases of more general inference algorithms forarbitrary PINs. Furthermore, the existence of inference and estimationalgorithms for more general graphical models provides a set of analysistools for HMM practitioners who wish to explore a richer class of HMMstructures.Examples of relatively complex models to handle sensorfusion and coarticulationin speech recognitionare introduced and treated within the graphical model framework toillustrate the advantages of the general approach.
dc.format 31 p.
dc.format 664995 bytes
dc.format 687871 bytes
dc.format application/postscript
dc.format application/pdf
dc.language en_US
dc.relation AIM-1565
dc.relation CBCL-132
dc.subject AI
dc.subject MIT
dc.subject Artificial Intelligence
dc.subject graphical models
dc.subject Hidden Markov models
dc.subject HMM's
dc.subject learning
dc.subject probabilistic models
dc.subject speech recognition
dc.subject Bayesian networks
dc.subject belief networks
dc.subject Markov networks
dc.subject probabilistic propagation
dc.subject inference
dc.subject coarticulation
dc.title Probabilistic Independence Networks for Hidden Markov Probability Models


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