George Athanasopoulos
;
Donald Poskitt
;
Farshid Vahid
;
Wenying Yao
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determination of long-run and short-run dynamics in ec-varma models via canonical correlations (replication data)

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.

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Suggested Citation

Athanasopoulos, George; Poskitt, Donald; Vahid, Farshid; Yao, Wenying (2016): Determination of Long-run and Short-run Dynamics in EC-VARMA Models via Canonical Correlations (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://journaldata.zbw.eu/dataset/determination-of-longrun-and-shortrun-dynamics-in-ecvarma-models-via-canonical-correlations?activity_id=f0f5942e-c6cc-48b7-a85a-e3f1895b1b40