Asymptotic normality of the maximum-likelihood estimator for general hidden Markov models 论文

1998The Annals of Statistics引用 352
Bayesian Methods and Mixture ModelsProbability and Risk ModelsRandom Matrices and Applications

摘要

Hidden Markov models (HMMs) have during the last decade become a widespread tool for modeling sequences of dependent random variables. Inference for such models is usually based on the maximum-likelihood estimator (MLE), and consistency of the MLE for general HMMs was recently proved by Leroux. In this paper we show that under mild conditions the MLE is also asymptotically normal and prove that the observed information matrix is a consistent estimator of the Fisher information.