Empirical Bayes Estimation in Nonstationary Markov chains

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Abstract:

Estimation procedures for nonstationary Markov chains appear to be relatively sparse. This work introduces empirical  Bayes estimators  for the transition probability  matrix of a finite nonstationary  Markov chain. The data are assumed to be of  a panel study type in which each data set consists of a sequence of observations on N>=2 independent and identically distributed chains recorded collectively.

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Journal title

volume 2  issue 1

pages  77- 88

publication date 2005-09

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