Asymptotic inference for a sign-double autoregressive (SDAR) model of order one.
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Asymptotic inference for a sign-double autoregressive (SDAR) model of order one.Author(s)
Date
2025Citation
Iglesias, E. M. (2025). Asymptotic inference for a sign-double autoregressive (SDAR) model of order one. Econometric Reviews, 44(3), 312–334. https://doi.org/10.1080/07474938.2024.2416664
Abstract
[Abstract]: We propose an extension of the double autoregressive (DAR) model: the sign-double autoregressive (SDAR) model, in the spirit of the GJR-GARCH model (also named the sign-ARCH
model). Our model shares the important property of DAR models where a unit root does not
imply nonstationarity and it allows for asymmetry, as other alternatives in the literature such
as the GJR-GARCH or asymmetric linear DAR and dual-asymmetry linear DAR models. We
establish consistency and asymptotic normality of the quasi-maximum likelihood estimator in
the context of the SDAR model. Furthermore, it is shown by simulations that the asymptotic
properties also apply in finite samples. Finally, an empirical application shows the usefulness
of our model specially in periods of supply/demand crises of oil disruptions, where spikes of
volatility are very likely to be predominant.
Keywords
Sign-double autoregressive model
Asymptotic normality
Asymptotic Theory
Consistency
Stationarity
Quasi maximum likelihood estimation
Asymptotic normality
Asymptotic Theory
Consistency
Stationarity
Quasi maximum likelihood estimation
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Atribución-NoComercial-SinDerivadas 4.0
ISSN
0747-4938
1532-4168
1532-4168