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Identifying causal relationships in case of non-stationary time series

Author

Listed:
  • Papana, A.

    (University of Macedonia)

  • Kyrtsou, K.

    (University of Macedonia)

  • Kugiumtzis, D.

    (Aristotle University of Thessaloniki)

  • Diks, C.G.H.

    (University of Amsterdam)

Abstract

The standard linear Granger non-causality test is effective only when time series are stationary. In case of non-stationary data, a vector autoregressive model (VAR) in first differences should be used instead. However, if the examined time series are co-integrated, a VAR in first differences will also fail to capture the long-run relationships. The vector error-correction model (VECM) has been introduced to correct a disequilibrium that may shock the whole system. The VECM accounts for both short run and long run relationships, since it is fit to the first differences of the non-stationary variables, and a lagged error-correction term is also included. An alternative approach of estimating causality when time series are non-stationary, is to use a non-parametric information-based measure, such as the transfer entropy on rank vectors (TERV) and its multivariate extension partial TERV (PTERV). The two approaches, namely the VECM and the TERV / PTERV, are evaluated on simulated and real data. The advantage of the TERV / PTERV is that it can be applied directly to the non-stationary data, whereas no integration / co-integration test is required in advance. On the other hand, the VECM can discriminate between short run and long run causality.

Suggested Citation

  • Papana, A. & Kyrtsou, K. & Kugiumtzis, D. & Diks, C.G.H., 2014. "Identifying causal relationships in case of non-stationary time series," CeNDEF Working Papers 14-09, Universiteit van Amsterdam, Center for Nonlinear Dynamics in Economics and Finance.
  • Handle: RePEc:ams:ndfwpp:14-09
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    References listed on IDEAS

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    Cited by:

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