DocumentCode
3849339
Title
Analyticity, Convergence, and Convergence Rate of Recursive Maximum-Likelihood Estimation in Hidden Markov Models
Author
Vladislav B. Tadic
Author_Institution
Department of Mathematics, University of Bristol, University Walk, Bristol, United Kingdom
Volume
56
Issue
12
fYear
2010
Firstpage
6406
Lastpage
6432
Abstract
This paper considers the asymptotic properties of the recursive maximum-likelihood estimator for hidden Markov models. The paper is focused on the analytic properties of the asymptotic log-likelihood and on the point-convergence and convergence rate of the recursive maximum-likelihood estimator. Using the principle of analytic continuation, the analyticity of the asymptotic log-likelihood is shown for analytically parameterized hidden Markov models. Relying on this fact and some results from differential geometry (Lojasiewicz inequality), the almost sure point convergence of the recursive maximum-likelihood algorithm is demonstrated, and relatively tight bounds on the convergence rate are derived. As opposed to the existing result on the asymptotic behavior of maximum-likelihood estimation in hidden Markov models, the results of this paper are obtained without assuming that the log-likelihood function has an isolated maximum at which the Hessian is strictly negative definite.
Keywords
"Maximum likelihood estimation","Convergence","Recursive estimation","Hidden Markov models"
Journal_Title
IEEE Transactions on Information Theory
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.2010.2081110
Filename
5625652
Link To Document