Testing for Granger causality in large mixed-frequency VARs von Thomas B. Götz | ISBN 9783957292179

Testing for Granger causality in large mixed-frequency VARs

von Thomas B. Götz, Alain Hecq und Stephan Smeekes
Mitwirkende
Autor / AutorinThomas B. Götz
Autor / AutorinAlain Hecq
Autor / AutorinStephan Smeekes
Buchcover Testing for Granger causality in large mixed-frequency VARs | Thomas B. Götz | EAN 9783957292179 | ISBN 3-95729-217-4 | ISBN 978-3-95729-217-9

Testing for Granger causality in large mixed-frequency VARs

von Thomas B. Götz, Alain Hecq und Stephan Smeekes
Mitwirkende
Autor / AutorinThomas B. Götz
Autor / AutorinAlain Hecq
Autor / AutorinStephan Smeekes
We analyze Granger causality testing in a mixed-frequency VAR, where the difference in sampling frequencies of the variables is large. Given a realistic sample size, the number of high-frequency observations per low-frequency period leads to parameter proliferation problems in case we attempt to estimate the model unrestrictedly. We propose several tests based on reduced rank restrictions, and implement bootstrap versions to account for the uncertainty when estimating factors and to improve the finite sample properties of these tests. We also consider a Bayesian VAR that we carefully extend to the presence of mixed frequencies. We compare these methods to an aggregated model, the max-test approach introduced by Ghysels et al. (2015a) as well as to the unrestricted VAR using Monte Carlo simulations. The techniques are illustrated in an empirical application involving daily realized volatility and monthly business cycle fluctuations.