
doi: 10.1002/for.965
handle: 11388/150225 , 11573/1730825 , 11573/1730776 , 11570/1910173
In many real phenomena the behaviour of a certain variable, subject to different regimes, depends on the state of other variables or the same variable observed in other subjects, so the knowledge of the state of the latter could be important to forecast the state of the former. In this paper a particular multivariate Markov switching model is developed to represent this case. The transition probabilities of this model are characterized by the dependence on the regime of the other variables. The estimation of the transition probabilities provides useful information for the researcher to forecast the regime of the variables analysed. Theoretical background and an application are shown. Copyright © 2005 John Wiley & Sons, Ltd.
regime switching; multivariate time series; transition probabilities
regime switching; multivariate time series; transition probabilities
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