textabstractTests of causality in variance in multiple time series have been proposed recently, based on residuals of estimated univariate models. Although such tests are applied frequently little is known about their power properties. In this paper we show that a convenient alternative to residual based testing is to specify a multivariate volatility model, such as multivariate GARCH (or BEKK), and construct a Wald test on noncausality in variance. We compare both approaches to testing causality in variance in terms of asymptotic and finite sample properties. The Wald test is shown to have superior power properties under a sequence of local alternatives. Furthermore, we show by simulation that the Wald test is quite robust to misspecificat...
The properties of the Granger-causality test in stationary and stable Vector Autoregressive (VAR) mo...
The properties of the Granger-causality test in stationary and stable Vector Autoregressive (VAR) mo...
This paper assesses the performance of linear and nonlinear causality tests in the presence of multi...
Tests of causality in variance in multiple time series have been proposed recently, based on residua...
Tests of causality in variance in multiple time serieshave been proposed recently, based on residual...
les tests de causalité en variance dans des séries temporelles multiples ont été récemment proposés,...
An early development in testing for causality (technically, Granger non-causality) in the conditiona...
An early development in testing for causality (technically, Granger non-causality) in the conditiona...
Here, we derive optimal rank-based tests for noncausality in the sense of Granger between two multiv...
textabstractAn early development in testing for causality (technically, Granger non-causality) in th...
Here, we derive optimal rank-based tests for noncausality in the sense of Granger between two multiv...
We discuss the sensitivity to the GARCH(1; 1) parameters in the causality of variance tests. Themoti...
This paper extends the current literature on the variance-causality topic providing the coefficient...
We discuss the sensitivity to the GARCH(1; 1) parameters in the causality of variance tests. Themoti...
This paper extends the current literature on the variance-causality topic providing the coefficient ...
The properties of the Granger-causality test in stationary and stable Vector Autoregressive (VAR) mo...
The properties of the Granger-causality test in stationary and stable Vector Autoregressive (VAR) mo...
This paper assesses the performance of linear and nonlinear causality tests in the presence of multi...
Tests of causality in variance in multiple time series have been proposed recently, based on residua...
Tests of causality in variance in multiple time serieshave been proposed recently, based on residual...
les tests de causalité en variance dans des séries temporelles multiples ont été récemment proposés,...
An early development in testing for causality (technically, Granger non-causality) in the conditiona...
An early development in testing for causality (technically, Granger non-causality) in the conditiona...
Here, we derive optimal rank-based tests for noncausality in the sense of Granger between two multiv...
textabstractAn early development in testing for causality (technically, Granger non-causality) in th...
Here, we derive optimal rank-based tests for noncausality in the sense of Granger between two multiv...
We discuss the sensitivity to the GARCH(1; 1) parameters in the causality of variance tests. Themoti...
This paper extends the current literature on the variance-causality topic providing the coefficient...
We discuss the sensitivity to the GARCH(1; 1) parameters in the causality of variance tests. Themoti...
This paper extends the current literature on the variance-causality topic providing the coefficient ...
The properties of the Granger-causality test in stationary and stable Vector Autoregressive (VAR) mo...
The properties of the Granger-causality test in stationary and stable Vector Autoregressive (VAR) mo...
This paper assesses the performance of linear and nonlinear causality tests in the presence of multi...