Un-truncating VARs
Macroeconomic research often relies on structural vector autoregressions to uncover empirical regularities. Critics argue the method goes awry due to lag truncation: short lag-lengths imply a poor approximation to DSGE-models. Empirically, short lag-length is deemed necessary as increased parametrization induces excessive uncertainty. The paper shows that this argument is incomplete. Longer lag-length simultaneously reduces misspecification, which in turn reduces variance. For data generated by frontier DSGE-models long-lag VARs are feasible, reduce bias and variance, and have better coverage. Thus, contrary to conventional wisdom, the trivial solution to the critique actually works.
| Year of publication: |
2013-06-01
|
|---|---|
| Authors: | De Graeve, Ferre ; Westermark, Andreas |
| Institutions: | Sveriges Riksbank |
| Subject: | VAR | SVAR | Lag-length | Truncation |
Saved in: