Title :
Estimation of non-stationary Markov Chain transition models
Author :
Bertuccelli, L.F. ; How, J.P.
Author_Institution :
Aerosp. Controls Lab., Massachusetts Inst. of Technol., MA, USA
Abstract :
Many decision systems rely on a precisely known Markov Chain model to guarantee optimal performance, and this paper considers the online estimation of unknown, non-stationary Markov Chain transition models with perfect state observation. In using a prior Dirichlet distribution on the uncertain rows, we derive a mean-variance equivalent of the maximum a posteriori (MAP) estimator. This recursive mean-variance estimator extends previous methods that recompute the moments at each time step using observed transition counts. It is shown that this mean-variance estimator responds slowly to changes in transition models (especially switching models) and a modification that uses ideas of pseudonoise addition from classical filtering is used to speed up the response of the estimator. This new, discounted mean-variance estimator has the intuitive interpretation of fading previous observations and provides a link to fading techniques used in Hidden Markov Model estimation. Our new estimation techniques is both faster and has reduced error than alternative estimation techniques, such as finite memory estimators.
Keywords :
Markov processes; maximum likelihood estimation; state estimation; a prior Dirichlet distribution; decision systems; hidden Markov model estimation; maximum a posteriori estimator; nonstationary Markov Chain transition models; online estimation; recursive mean-variance estimator; state observation; Convergence; Delay estimation; Fading; Frequency estimation; Hidden Markov models; Maximum likelihood estimation; Optimal control; Recursive estimation; State estimation; Switches;
Conference_Titel :
Decision and Control, 2008. CDC 2008. 47th IEEE Conference on
Conference_Location :
Cancun
Print_ISBN :
978-1-4244-3123-6
Electronic_ISBN :
0191-2216
DOI :
10.1109/CDC.2008.4738904