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Modelling an forecasting time series sampled at different frequencies

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Abstract

This paper discusses how to specify an observable high-frequency model for a vector of time series sampled at high and low frequencies. To this end we first study how aggregation over time affects both, the dynamic components of a time series and their observability, in a multivariate linear framework. We find that the basic dynamic components remain unchanged but some of them, mainly those related to the seasonal structure, become unobservable. Building on these results, we propose a structured specification method built on the idea that the models relating the variables in high and low sampling frequencies should be mutually consistent. After specifying a consistent and observable high-frequency model, standard state-space techniques provide an adequate framework for estimation, diagnostic checking, data interpolation and forecasting. Our method has three main uses. First, it is useful to disaggregate a vector of low-frequency time series into high-frequency estimates coherent with both, the sample information and its statistical properties. Second, it may improve forecasting of the low-frequency variables, as the forecasts conditional to high-frequency indicators have in general smaller error variances than those derived from the corresponding low-frequency values. Third, the resulting forecasts can be updated as new high-frequency values become available, thus providing an effective tool to assess the effect of new information over medium term expectations. An example using national accounting data illustrates the practical application of this method.

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  • José Casals Carro & Miguel Jerez Méndez & Sonia Sotoca López, 2006. "Modelling an forecasting time series sampled at different frequencies," Documentos de Trabajo del ICAE 0603, Universidad Complutense de Madrid, Facultad de Ciencias Económicas y Empresariales, Instituto Complutense de Análisis Económico.
  • Handle: RePEc:ucm:doicae:0603
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    2. García-Hiernaux, Alfredo & Guerrero, David E. & McAleer, Michael, 2016. "Market integration dynamics and asymptotic price convergence in distribution," Economic Modelling, Elsevier, vol. 52(PB), pages 913-925.
    3. Andrawis, Robert R. & Atiya, Amir F. & El-Shishiny, Hisham, 2011. "Combination of long term and short term forecasts, with application to tourism demand forecasting," International Journal of Forecasting, Elsevier, vol. 27(3), pages 870-886, July.
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    5. Aristei, David & Martelli, Duccio, 2014. "Sovereign bond yield spreads and market sentiment and expectations: Empirical evidence from Euro area countries," Journal of Economics and Business, Elsevier, vol. 76(C), pages 55-84.
    6. Elena Marquez & Belen Nieto, 2011. "Further international evidence on durable consumption growth and long-run consumption risk," Quantitative Finance, Taylor & Francis Journals, vol. 11(2), pages 195-217.

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