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Maximum likelihood estimates of incorrect Markov models for time series and the derivation of AIC

Published online by Cambridge University Press:  14 July 2016

Yosihiko Ogata*
Affiliation:
The Institute of Statistical Mathematics, Tokyo
*
Postal address: The Institute of Statistical Mathematics, 4–6–7 Minami-Azabu, Minato-Ku, Tokyo, Japan.

Abstract

The asymptotic behavior of the maximum likelihood estimators of Markov models or autoregressive models are given when the true distribution is not a member of the assumed parametric family. The derivation of Akaike's Information Criterion is reviewed for this case.

Type
Research Papers
Copyright
Copyright © Applied Probability Trust 1980 

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