Testing for Granger causality in large mixed-frequency VARs
In this paper we analyze Granger causality testing in a mixed-frequency VAR, originally proposed by Ghysels 2012, where the difference in sampling frequencies of the variables is large. In particular, we investigate whether past information on a low-frequency variable help in forecasting a high-frequency one and vice versa. 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 two approaches to solve this problem, reduced rank restrictions and a Bayesian mixed-frequency VAR. For the latter, we extend the approach in Banbura et al. 2010 to a mixed-frequency setup, which presents an alternative to classical Bayesian estimation techniques. We compare these methods to a common aggregated low-frequency model as well as to the unrestricted VAR in terms of their Granger non-causality testing behavior using Monte Carlo simulations. The techniques are illustrated in an empirical application involving dailyrealized volatility and monthly business cycle fluctuations.
Year of publication: |
2014
|
---|---|
Authors: | Götz T.B. ; Hecq A.W. |
Institutions: | Graduate School of Business and Economics (GSBE), School of Business and Economics |
Subject: | Hypothesis Testing: General | Multiple or Simultaneous Equation Models: Time-Series Models | Dynamic Quantile Regressions | Dynamic Treatment Effect Models |
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