Title :
Sparseness Achievement in Hidden Markov Models
Author :
Bicego, Manuele ; Cristani, Marco ; Murino, Vittorio
Author_Institution :
Univ. of Sassari, Sassari
Abstract :
In this paper, a novel learning algorithm for Hidden Markov Models (HMMs) has been devised. The key issue is the achievement of a sparse model, i.e., a model in which all irrelevant parameters are set exactly to zero. Alternatively to standard maximum likelihood estimation (Baum Welch training), in the proposed approach the parameters estimation problem is cast into a Bayesian framework, with the introduction of a negative Dirichlet prior, which strongly encourages sparseness of the model. A modified Expectation Maximization algorithm has been devised, able to determine a MAP (maximum a posteriori probability) estimate of HMM parameters in this Bayesian formulation. Theoretical considerations and experimental comparative evaluations on a 2D shape classification task contribute to validate the proposed technique.
Keywords :
Bayes methods; expectation-maximisation algorithm; hidden Markov models; pattern classification; 2D shape classification; Baum Welch training; Bayesian framework; HMM; MAP; expectation maximization algorithm; hidden Markov models; learning algorithm; maximum a posteriori probability; maximum likelihood estimation; negative Dirichlet prior; parameters estimation problem; sparseness achievement; Bayesian methods; Character recognition; Data mining; Hidden Markov models; Maximum likelihood estimation; Parameter estimation; Shape; Speech recognition; Supervised learning; Topology;
Conference_Titel :
Image Analysis and Processing, 2007. ICIAP 2007. 14th International Conference on
Conference_Location :
Modena
Print_ISBN :
978-0-7695-2877-9
DOI :
10.1109/ICIAP.2007.4362759