We derive a framework for asymptotically valid inference in stable vector autoregressive (VAR) models with conditional heteroskedasticity of unknown form. We prove a joint central limit theorem for the VAR slope parameter and innovation covariance parameter estimators and address bootstrap inference as well. Our results are important for correct inference on VAR statistics that depend both on the VAR slope and the variance parameters as e.g. in structural impulse response functions (IRFs). We also show that wild and pairwise bootstrap schemes fail in the presence of conditional heteroskedasticity if inference on (functions) of the unconditional variance parameters is of interest because they do not correctly replicate the relevant fourth m...
In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) likelih...
In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) likelih...
none3In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) li...
We derive a framework for asymptotically valid inference in stable vector autoregressive (VAR) mode...
We derive a framework for asymptotically valid inference in stable vector autoregressive (VAR) mode...
We derive a framework for asymptotically valid inference in stable vector autoregressive (VAR) mode...
We derive a framework for asymptotically valid inference in stable vector autoregressive (VAR) model...
We consider estimation and hypothesis testing on the coefficients of the co-integrating relations an...
We consider estimation and hypothesis testing on the coefficients of the co-integrating relations an...
We consider estimation and hypothesis testing on the coefficients of the co-integrating relations an...
Conditional heteroskedasticity is an important feature of many macroeconomic and financial time seri...
In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) likelih...
textabstractIn this paper we introduce a bootstrap procedure to test parameter restrictions in vecto...
open4siFinancial support: Danish Council for Independent Research, Sapere Aude (Grant nr: 12-124980)...
Conditional heteroskedasticity is an important feature of many macroeconomic and financial time seri...
In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) likelih...
In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) likelih...
none3In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) li...
We derive a framework for asymptotically valid inference in stable vector autoregressive (VAR) mode...
We derive a framework for asymptotically valid inference in stable vector autoregressive (VAR) mode...
We derive a framework for asymptotically valid inference in stable vector autoregressive (VAR) mode...
We derive a framework for asymptotically valid inference in stable vector autoregressive (VAR) model...
We consider estimation and hypothesis testing on the coefficients of the co-integrating relations an...
We consider estimation and hypothesis testing on the coefficients of the co-integrating relations an...
We consider estimation and hypothesis testing on the coefficients of the co-integrating relations an...
Conditional heteroskedasticity is an important feature of many macroeconomic and financial time seri...
In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) likelih...
textabstractIn this paper we introduce a bootstrap procedure to test parameter restrictions in vecto...
open4siFinancial support: Danish Council for Independent Research, Sapere Aude (Grant nr: 12-124980)...
Conditional heteroskedasticity is an important feature of many macroeconomic and financial time seri...
In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) likelih...
In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) likelih...
none3In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) li...