Abstract
State space models is a very general class of time series models capable of modelling dependent observations in a natural and interpretable way. Inference in such models has been studied by Bickel, Ritov and Rydén, who consider hidden Markov models, which are special kinds of state space models, and prove that the maximum likelihood estimator is asymptotically normal under mild regularity conditions. In this paper we generalize the results of Bickel, Ritov and Rydén to state space models, where the latent process is a continuous state Markov chain satisfying regularity conditions, which are fulfilled if the latent process takes values in a compact space.
Citation
Jens Ledet Jensen. Niels Væver Petersen. "Asymptotic normality of the maximum likelihood estimator in state space models." Ann. Statist. 27 (2) 514 - 535, April 1999. https://doi.org/10.1214/aos/1018031205
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