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Original Articles

Robust fitting of hidden Markov regression models under a longitudinal setting

Pages 1728-1747 | Received 27 Jul 2012, Accepted 01 Jan 2013, Published online: 23 Jan 2013
 

Abstract

We propose a robust estimation procedure for the analysis of longitudinal data including a hidden process to account for unobserved heterogeneity between subjects in a dynamic fashion. We show how to perform estimation by an expectation–maximization-type algorithm in the hidden Markov regression literature. We show that the proposed robust approaches work comparably to the maximum-likelihood estimator when there are no outliers and the error is normal and outperform it when there are outliers or the error is heavy tailed. A real data application is used to illustrate our proposal. We also provide details on a simple criterion to choose the number of hidden states.

Acknowledgements

I am grateful to Weixin Yao for his insightful comments and suggestions. I thank an anonymous referee for the precise review of my article and the very useful comments.

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