Equilibrium business cycle models have typically less shocks than variables. As pointed out by Altug, 1989, and Sargent, 1989, if variables are measured with error, this characteristic implies that the model solution for measured variables has a factor structure. This Paper compares estimation performance for the impulse response coefficients based on a VAR approximation to this class of models and an estimation method that explicitly takes into account the restrictions implied by the factor structure. Bias and mean squared error for both factor based and VAR based estimates of impulse response functions are quantified using, as a data generating process, a calibrated standard equilibrium business cycle model. We show that, at short horizon...
This paper examines whether bivariate structural VAR models with long–run restrictions give reliable...
Impulse response and forecast error variance matrix asymptotics are developed for VAR models with so...
Can long-run identified structural vector autoregressions (SVARs) discriminate between competing mod...
Equilibrium business cycle models have typically less shocks than variables. As pointed out by Altu...
This paper considers VAR models incorporating many time series that interact through a few dynamic f...
The estimation of structural dynamic factor models (DFMs) for large sets of variables is attracting ...
A structural factor-augmented VAR model is used to evaluate the role of \u2018news shocks\u2019 in g...
Small scale VAR models are subject to two major issues: first, the information set might be too narr...
This paper examines the issue of how to identify the shocks in a cointegrated VAR when the following...
Impulse response functions are one of the major analytic concepts in modern macroeconomics. However,...
validated by careful comparison of their statistical fit to that of Bayesian VARs. These models sugg...
We propose a new Information Criterion for Impulse Response Function Matching estimators of the stru...
A structural Factor-Augmented VAR model is used to evaluate the role of ``news'' shocks in generatin...
This paper proposes the use of dynamic factor models as an alternative to the VAR-based tools for th...
Can long-run identified structural vector autoregressions (SVARs) discriminate between competing mod...
This paper examines whether bivariate structural VAR models with long–run restrictions give reliable...
Impulse response and forecast error variance matrix asymptotics are developed for VAR models with so...
Can long-run identified structural vector autoregressions (SVARs) discriminate between competing mod...
Equilibrium business cycle models have typically less shocks than variables. As pointed out by Altu...
This paper considers VAR models incorporating many time series that interact through a few dynamic f...
The estimation of structural dynamic factor models (DFMs) for large sets of variables is attracting ...
A structural factor-augmented VAR model is used to evaluate the role of \u2018news shocks\u2019 in g...
Small scale VAR models are subject to two major issues: first, the information set might be too narr...
This paper examines the issue of how to identify the shocks in a cointegrated VAR when the following...
Impulse response functions are one of the major analytic concepts in modern macroeconomics. However,...
validated by careful comparison of their statistical fit to that of Bayesian VARs. These models sugg...
We propose a new Information Criterion for Impulse Response Function Matching estimators of the stru...
A structural Factor-Augmented VAR model is used to evaluate the role of ``news'' shocks in generatin...
This paper proposes the use of dynamic factor models as an alternative to the VAR-based tools for th...
Can long-run identified structural vector autoregressions (SVARs) discriminate between competing mod...
This paper examines whether bivariate structural VAR models with long–run restrictions give reliable...
Impulse response and forecast error variance matrix asymptotics are developed for VAR models with so...
Can long-run identified structural vector autoregressions (SVARs) discriminate between competing mod...