This paper extends the multivariate index autoregressive model to the case of cointegrated time series of order (1,1). In this newmodelling, namely the vector error-correction index model (VECIM), the first differences of series are driven by some linear combinations of the variables, namely the indexes. When the indexes are significantly fewer than the variables, the VECIM achieves a substantial dimension reduction with reference to the vector error correction model.We show that the VECIM allows one to decompose the reduced-form errors into sets of common and uncommon shocks, and that the former can be further decomposed into permanent and transitory shocks. Moreover, we offer a switching algorithm for optimal estimation of the VECIM. Finally, we document the practical value of the proposed approach by both simulations and an empirical application, where we search for the shocks that drive the aggregate fluctuations at different frequency bands in the US.

Cubadda, G., Mazzali, M. (2023). The Vector Error Correction Index Model: Representation, Estimation and Identification. ECONOMETRICS JOURNAL [10.1093/ectj/utad023].

The Vector Error Correction Index Model: Representation, Estimation and Identification

Cubadda, Gianluca
;
Mazzali, Marco
2023-10-23

Abstract

This paper extends the multivariate index autoregressive model to the case of cointegrated time series of order (1,1). In this newmodelling, namely the vector error-correction index model (VECIM), the first differences of series are driven by some linear combinations of the variables, namely the indexes. When the indexes are significantly fewer than the variables, the VECIM achieves a substantial dimension reduction with reference to the vector error correction model.We show that the VECIM allows one to decompose the reduced-form errors into sets of common and uncommon shocks, and that the former can be further decomposed into permanent and transitory shocks. Moreover, we offer a switching algorithm for optimal estimation of the VECIM. Finally, we document the practical value of the proposed approach by both simulations and an empirical application, where we search for the shocks that drive the aggregate fluctuations at different frequency bands in the US.
23-ott-2023
Online ahead of print
Rilevanza internazionale
Articolo
Esperti anonimi
Settore SECS-S/03
English
Con Impact Factor ISI
Vector autoregressive model, multivariate autoregressive index model, cointegration, reduced-rank regression, dimension reduction, main business cycle shock.
Cubadda, G., Mazzali, M. (2023). The Vector Error Correction Index Model: Representation, Estimation and Identification. ECONOMETRICS JOURNAL [10.1093/ectj/utad023].
Cubadda, G; Mazzali, M
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/342824
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