We provide a tutorial on learning and inference in hidden Markov models in the context of the recent literature on Bayesian networks. This perspective make sit possible to consider novel generalizations to hidden Markov models with multiple hidden state variables, multiscale representations, and mixed discrete and continuous variables. Although exact inference in these generalizations is usually intractable, one can use approximate inference in these generalizations is usually intractable, one can use approximate inference algorithms such as Markov chain sampling and variational methods. We describe how such methods are applied to these generalized hidden Markov models. We conclude this review with a discussion of Bayesian methods for model selection in generalized HMMs.
Description
An introduction to hidden Markov models and Bayesian networks
%0 Journal Article
%1 505743
%A Ghahramani, Zoubin
%C River Edge, NJ, USA
%D 2002
%I World Scientific Publishing Co., Inc.
%K bayesian hmm imported proj:o4p toread
%P 9--42
%T An introduction to hidden Markov models and Bayesian networks
%U http://portal.acm.org/citation.cfm?id=505743
%X We provide a tutorial on learning and inference in hidden Markov models in the context of the recent literature on Bayesian networks. This perspective make sit possible to consider novel generalizations to hidden Markov models with multiple hidden state variables, multiscale representations, and mixed discrete and continuous variables. Although exact inference in these generalizations is usually intractable, one can use approximate inference in these generalizations is usually intractable, one can use approximate inference algorithms such as Markov chain sampling and variational methods. We describe how such methods are applied to these generalized hidden Markov models. We conclude this review with a discussion of Bayesian methods for model selection in generalized HMMs.
%@ 981-02-4564-5
@article{505743,
abstract = {We provide a tutorial on learning and inference in hidden Markov models in the context of the recent literature on Bayesian networks. This perspective make sit possible to consider novel generalizations to hidden Markov models with multiple hidden state variables, multiscale representations, and mixed discrete and continuous variables. Although exact inference in these generalizations is usually intractable, one can use approximate inference in these generalizations is usually intractable, one can use approximate inference algorithms such as Markov chain sampling and variational methods. We describe how such methods are applied to these generalized hidden Markov models. We conclude this review with a discussion of Bayesian methods for model selection in generalized HMMs.},
added-at = {2008-01-12T12:29:19.000+0100},
address = {River Edge, NJ, USA},
author = {Ghahramani, Zoubin},
biburl = {https://www.bibsonomy.org/bibtex/2160056e0d5592179ad38b883c5314552/wnpxrz},
book = {Hidden Markov models: applications in computer vision},
description = {An introduction to hidden Markov models and Bayesian networks},
interhash = {7d4f364902edf00c278f46f7a84a08a1},
intrahash = {160056e0d5592179ad38b883c5314552},
isbn = {981-02-4564-5},
keywords = {bayesian hmm imported proj:o4p toread},
pages = {9--42},
publisher = {World Scientific Publishing Co., Inc.},
timestamp = {2008-01-12T12:29:19.000+0100},
title = {An introduction to hidden Markov models and Bayesian networks},
url = {http://portal.acm.org/citation.cfm?id=505743},
year = 2002
}