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Non-linear time series and Markov chains

Published online by Cambridge University Press:  01 July 2016

Dag Tjøstheim*
Affiliation:
University of Bergen
*
Postal address: Department of Mathematics, University of Bergen, 5007 Bergen, Norway.

Abstract

It is shown how Markov chain theory can be exploited to study non-linear time series, the emphasis being on the classification into stationary and non-stationary models. A generalized h-step version of the Tweedie (1975), (1976) criteria is formulated, and applications are given to a number of non-linear models. New results are obtained, and known results are shown to emerge as special cases in both the scalar and vector case. A connection to stability theory is briefly discussed, and it is indicated how the Markov property can be utilized for estimation purposes.

Type
Research Article
Copyright
Copyright © Applied Probability Trust 1990 

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