Matthieu Droumaguet
;
Anders Warne
;
Tomasz Woźniak
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granger causality and regime inference in markov switching var models with bayesian methods (replication data)

In this paper, we derive restrictions for Granger noncausality in MS-VAR models and show under what conditions a variable does not affect the forecast of the hidden Markov process. To assess the noncausality hypotheses, we apply Bayesian inference. The computational tools include a novel block Metropolis-Hastings sampling algorithm for the estimation of the underlying models. We analyze a system of monthly US data on money and income. The results of testing in MS-VARs contradict those obtained with linear VARs: the money aggregate M1 helps in forecasting industrial production and in predicting the next period's state.

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Suggested Citation

Droumaguet, Matthieu; Warne, Anders; Woźniak, Tomasz (2016): Granger Causality and Regime Inference in Markov Switching VAR Models with Bayesian Methods (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://jda-test.zbw.eu/dataset/granger-causality-and-regime-inference-in-markov-switching-var-models-with-bayesian-methods?activity_id=3dcb5842-1174-4643-92fc-0a96dac67d9a