In this study, Bayesian inference is developed for structural vector autoregressive models in which the structural parameters are identified via Markov-switching heteroskedasticity. In such a model, restrictions that are just-identifying in the homoskedastic case, become over-identifying and can be tested. A set of parametric restrictions is derived under which the structural matrix is globally or partially identified and a Savage-Dickey density ratio is used to assess the validity of the identification conditions. The latter is facilitated by analytical derivations that make the computations fast and numerical standard errors small. As an empirical example, monetary models are compared using heteroskedasticity as an additional device for i...
Long-run restrictions have been used extensively for identifying structural shocks in vector autoreg...
This paper provides an overview of a time-varying Structural Panel Bayesian Vector Autoregression mo...
Abstract Changes in residual volatility in vector autoregressive (VAR) models can be used for identi...
In this study, Bayesian inference is developed for structural vector autoregressive models in which ...
Defence date: 27 March 2013Examining Board: Professor Helmut Lütkepohl, DIW Berlin and Freie Univers...
A correction: The Econometrics Journal, Volume 24, Issue 1, January 2021, Page 198, https://doi.org/...
A growing literature uses changes in residual volatility for identifying structural shocks in vecto...
In structural vector autoregressive analysis identifying the shocks of interest via heteroskedastici...
It is argued that in structural vector autoregressive (SVAR) analysis a Markov regime switching (MS)...
This article reviews Bayesian inference methods for Vector Autoregression models, commonly used prio...
A comprehensive methodology for inference in vector autoregressions (VARs) using sign and other stru...
Defence date: 18 December 2012Examining Board: Professor Massimiliano Marcellino, European Universit...
In order to employ vector autoregressions (VAR) for the analysis of causal relations between economi...
Defence date: 10 June 2011Examining Board: Professor Helmut Lütkepohl, European University Institute...
Long-run restrictions have been used extensively for identifying structural shocks in vector autoreg...
This paper provides an overview of a time-varying Structural Panel Bayesian Vector Autoregression mo...
Abstract Changes in residual volatility in vector autoregressive (VAR) models can be used for identi...
In this study, Bayesian inference is developed for structural vector autoregressive models in which ...
Defence date: 27 March 2013Examining Board: Professor Helmut Lütkepohl, DIW Berlin and Freie Univers...
A correction: The Econometrics Journal, Volume 24, Issue 1, January 2021, Page 198, https://doi.org/...
A growing literature uses changes in residual volatility for identifying structural shocks in vecto...
In structural vector autoregressive analysis identifying the shocks of interest via heteroskedastici...
It is argued that in structural vector autoregressive (SVAR) analysis a Markov regime switching (MS)...
This article reviews Bayesian inference methods for Vector Autoregression models, commonly used prio...
A comprehensive methodology for inference in vector autoregressions (VARs) using sign and other stru...
Defence date: 18 December 2012Examining Board: Professor Massimiliano Marcellino, European Universit...
In order to employ vector autoregressions (VAR) for the analysis of causal relations between economi...
Defence date: 10 June 2011Examining Board: Professor Helmut Lütkepohl, European University Institute...
Long-run restrictions have been used extensively for identifying structural shocks in vector autoreg...
This paper provides an overview of a time-varying Structural Panel Bayesian Vector Autoregression mo...
Abstract Changes in residual volatility in vector autoregressive (VAR) models can be used for identi...