Measuring and testing Granger causality over the spectrum: An application to European production expectation surveys
Lemmens, A., Croux, C., Dekimpe, M.G.
Pages 414-431
AbstractDecomposing Granger causality over the spectrum allows us to
disentangle potentially different Granger causality relationships over
different frequencies. This may yield new and complementary insights
compared to traditional versions of Granger causality. In this paper, we
compare two existing approaches in the frequency domain, proposed
originally by Pierce [Pierce, D. A. (1979). R-squared measures for time
series. Journal of the American Statistical Association, 74, 901-910] and
Geweke [Geweke, J. (1982). Measurement of linear dependence and feedback
between multiple time series. Journal of the American Statistical
Association, 77, 304-324], and introduce a new testing procedure for the
Pierce spectral Granger causality measure. To provide insights into the
relative performance of this test, we study its power properties by means
of Monte Carlo simulations. In addition, we apply the methodology in the
context of the predictive value of the European production expectation
surveys. This predictive content is found to vary widely with the frequency
considered, illustrating the usefulness of not restricting oneself to a
single overall test statistic.
Keywords: Business surveys, Granger causality, Government forecasting, Production expectations, Spectral analysis