Determination of long-run and short-run dynamics in EC-VARMA models via canonical correlations
Version 2 2024-06-17, 19:46Version 2 2024-06-17, 19:46
Version 1 2016-08-03, 16:04Version 1 2016-08-03, 16:04
journal contribution
posted on 2024-06-17, 19:46authored byG Athanasopoulos, DS Poskitt, F Vahid, W Yao
This article studies a simple, coherent approach for identifying and estimating error-correcting vector autoregressive moving average (EC-VARMA) models. Canonical correlation analysis is implemented for both determining the cointegrating rank, using a strongly consistent method, and identifying the short-run VARMA dynamics, using the scalar component methodology. Finite-sample performance is evaluated via Monte Carlo simulations and the approach is applied to modelling and forecasting US interest rates. The results reveal that EC-VARMA models generate significantly more accurate out-of-sample forecasts than vector error correction models (VECMs), especially for short horizons.