Title of article
Bayesian Monte Carlo estimation for profile hidden Markov models
Author/Authors
Lewis، نويسنده , , Steven J. and Raval، نويسنده , , Alpan and Angus، نويسنده , , John E.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2008
Pages
19
From page
1198
To page
1216
Abstract
Hidden Markov models are used as tools for pattern recognition in a number of areas, ranging from speech processing to biological sequence analysis. Profile hidden Markov models represent a class of so-called “left–right” models that have an architecture that is specifically relevant to classification of proteins into structural families based on their amino acid sequences. Standard learning methods for such models employ a variety of heuristics applied to the expectation-maximization implementation of the maximum likelihood estimation procedure in order to find the global maximum of the likelihood function. Here, we compare maximum likelihood estimation to fully Bayesian estimation of parameters for profile hidden Markov models with a small number of parameters. We find that, relative to maximum likelihood methods, Bayesian methods assign higher scores to data sequences that are distantly related to the pattern consensus, show better performance in classifying these sequences correctly, and continue to perform robustly with regard to misspecification of the number of model parameters. Though our study is limited in scope, we expect our results to remain relevant for models with a large number of parameters and other types of left–right hidden Markov models.
Keywords
Hidden Markov Models , Estimation , Bayesian methods , Markov chain Monte Carlo methods
Journal title
Mathematical and Computer Modelling
Serial Year
2008
Journal title
Mathematical and Computer Modelling
Record number
1595551
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