I am using R package "vars".
library(vars) data("Canada") mymodel <- VAR(Canada, p = 2, type = "const")
I am interested in running impulse response analysis, e.g.:
vec.irf <- irf(mymodel, response = "U", n.ahead = 48, boot = TRUE) plot(vec.irf)
I am also conducting rforecast error variance decomposition, e.g.:
fevd.U <- fevd(mymodel, n.ahead = 48)$U fevd.U
What decomposition method is used in vars? Cholesky?
Is it possible (in vars or maybe in some other R package) to use not Cholesky but Generalized Impulse decomposition? Clarification: Generalized Impulses (as described by Pesaran and Shin, 1998) constructs an orthogonal set of innovations that does not depend on the VAR ordering. The generalized impulse responses from an innovation to the j-th variable are derived by applying a variable specific Cholesky factor computed with the j-th variable at the top of the Cholesky ordering.
Is it possible (in vars or in some other R package) to vary the ordering of the variables?
Thanks a lot!