VAR(MA), what is it good for? more bad news for reduced-form estimation and inference
report
posted on 2014-01-01, 00:00authored byWenying Yao, Timothy Kam, Farshid Vahid
It is common practice to use reduced-form vector autoregression (VAR) models, or more generally vector
autoregressive moving average (VARMA) models, to characterize the dynamics in observed data and to identify innovations
to the macroeconomy in some economically meaningful way. We demonstrate that neither approach|VAR or VARMA|are suitable
reduced form guides to \reality", if reality were induced by some underlying structural DSGE model. We conduct such a
thought experiment across a wide class of DSGE structures that imply particular VARMA data generating processes (DGPs).
We find that with the typical small samples for macroeconomic data, the MA component of the fitted VARMA models is close
to being non-identified. This in turn leads to an order reduction when identifying the lag structures of the VARMA models.
As a result, VARMA models barely show any advantage over VARs using realistic sample sizes. However, the VAR remains a
truly misspecified approximation. The VAR's performance deteriorates, in contrast to the VARMA's, as we enlarge the sample
size generated from the true DGPs.
History
Pagination
1-22
ISBN-13
9781862959460
Language
eng
Research statement
No research statement provided
Publication classification
CN Other journal article
Publisher
University of Tasmania, Tasmanian School of Business and Economics