This paper proposes a model suitable for exploiting fully the information contained in mixed frequency and mixed sample data in the estimation of cointegrating vectors. The asymptotic properties of easy-to-compute spectral regression estimators of the cointegrating vectors are derived and these estimators are shown to belong to the class of optimal cointegration estimators. Furthermore, Wald statistics based on these estimators have asymptotic chi-square distributions which enable inferences to be made straightforwardly. Simulation experiments suggest that the finite sample performance of a spectral regression estimator in an augmented mixed frequency model is particularly encouraging as it is capable of dramatically reducing the root mean ...
This paper proposes a mixed-frequency error correction model for possibly cointegrated non-stationar...
Standard inference in cointegrating models is fragile for two distinct reasons. First, even though c...
This paper studies the use of spectral regression techniques in the context of cointegrated systems ...
This paper proposes a simple method for exploiting the information contained in mixed frequency and ...
Recent work by the author on mixed frequency data analysis has focused on the estimation of cointegr...
The article introduces a method to estimate a cointegrated vector autoregressive model, using mixed-...
This thesis consists of five papers that study two aspects of vector autoregressive (VAR) modeling: ...
This paper analyses the effects of sampling frequency on the properties of spectral regression estim...
I analyze efficient estimation of a cointegrating vector when the regressand is observed at a lower ...
The development of models for variables sampled at different frequencies has attracted substantial i...
The development of models for variables sampled at different frequencies has attracted substantial i...
This paper derives exact representations for discrete time mixed frequency data generated by an unde...
We consider a cointegrating regression in which the integrated regressors are messy in the sense tha...
Three new approaches are proposed to handle mixed frequency Vector Autoregression. The first is an e...
This paper derives exact representations for discrete time mixed frequency data generated by an unde...
This paper proposes a mixed-frequency error correction model for possibly cointegrated non-stationar...
Standard inference in cointegrating models is fragile for two distinct reasons. First, even though c...
This paper studies the use of spectral regression techniques in the context of cointegrated systems ...
This paper proposes a simple method for exploiting the information contained in mixed frequency and ...
Recent work by the author on mixed frequency data analysis has focused on the estimation of cointegr...
The article introduces a method to estimate a cointegrated vector autoregressive model, using mixed-...
This thesis consists of five papers that study two aspects of vector autoregressive (VAR) modeling: ...
This paper analyses the effects of sampling frequency on the properties of spectral regression estim...
I analyze efficient estimation of a cointegrating vector when the regressand is observed at a lower ...
The development of models for variables sampled at different frequencies has attracted substantial i...
The development of models for variables sampled at different frequencies has attracted substantial i...
This paper derives exact representations for discrete time mixed frequency data generated by an unde...
We consider a cointegrating regression in which the integrated regressors are messy in the sense tha...
Three new approaches are proposed to handle mixed frequency Vector Autoregression. The first is an e...
This paper derives exact representations for discrete time mixed frequency data generated by an unde...
This paper proposes a mixed-frequency error correction model for possibly cointegrated non-stationar...
Standard inference in cointegrating models is fragile for two distinct reasons. First, even though c...
This paper studies the use of spectral regression techniques in the context of cointegrated systems ...