Hello,
I need to test for Granger-Causality in a multivariate (ie. not just in a biariate) VAR.
Lütkepohl (2005, New Introduction to Multiple Time Series, p.49 and 50), Dufour and Renault (2010, Short and long run causality measures: Theory and inference) point out that normal Granger-Causality tests are not reliable any more in a VAR with more than 2 variables.
Example: A trivariate VAR(2) with x_t,y_t,z_t:
y_t might be 1-step noncausal for z_t but it might still be h-step causal for z_t (h>1).
I found the following in a RATS help file:
*Multivariate Granger Causality (test to see if a block of variables is exogenous
*money and output trivariate system,
but that's not what I mean with multivariate Granger-Causality (that's just a normal LR-test).
I didn't find anything on my problem in this forum or the web, but:
Is there any way to implement Granger-Causality tests in a multivariate VAR?
Or asked the other way: I want to implement both short- and long-run restrictions in a 6 variable SVAR. But there's no economic story to tell (eg like money policy has no long-run impact on output), so I must get my restrictions out of the data. I have some zero correlations at t=0 and need to check whether I can use them together with non-granger causality relationships for long-run restrictions. But i cannot use the normal Granger-causality tests as they are valid only in a bivariate VAR.
