Two modified Portmanteau statistics are studied under dependence assumptions common in financial applications which can be used for testing that heteroskedastic time series are serially uncorrelated without assuming independence or Normality. Their asymptotic distribution is found to be null and their small sample properties are examined via Monte Carlo. The power of the tests is studied under the MA and GARCH-in-mean alternatives. The tests exhibit an appropriate empirical size and are seen to be more powerful than a robust Box-Pierce to the selected alternatives. Real data on daily stock returns and exchange rates is used to illustrate the tests.Se estudian dos estadísticos de Portmanteau modificados bajo supuestos de dependencia comunes ...
The asymptotic distribution of a vector of autocorrelations of squared residuals is derived for a wi...
AbstractMultivariate autoregressive models with exogenous variables (VARX) are often used in econome...
This paper presents and discusses a nonparametric test for detecting serial dependence. We consider ...
Se estudian dos estadísticos de Portmanteau modificados bajo supuestos de dependencia comunes en apl...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
A new portmanteau test for time series more powerful than the tests ofLjung and Box (1978) and Monti...
A data-driven version of a portmanteau test for detecting nonlinear types of statistical dependence...
This article reviews some recent advances in testing for serial correlation, provides Stata code for...
Abstract: Traditional tests for conditional heteroscedasticity are based on testing for signicant au...
International audienceIn this paper we consider estimation and test of fit for multiple autoregressi...
This article proposes a new diagnostic test for dynamic count models, which is well suited for risk ...
This paper considers the problem of testing for linearity of stationary time series. Portmanteau tes...
Commonly used tests to assess evidence for the absence of autocorrelation in a univariate time serie...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
The asymptotic distribution of a vector of autocorrelations of squared residuals is derived for a wi...
AbstractMultivariate autoregressive models with exogenous variables (VARX) are often used in econome...
This paper presents and discusses a nonparametric test for detecting serial dependence. We consider ...
Se estudian dos estadísticos de Portmanteau modificados bajo supuestos de dependencia comunes en apl...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
A new portmanteau test for time series more powerful than the tests ofLjung and Box (1978) and Monti...
A data-driven version of a portmanteau test for detecting nonlinear types of statistical dependence...
This article reviews some recent advances in testing for serial correlation, provides Stata code for...
Abstract: Traditional tests for conditional heteroscedasticity are based on testing for signicant au...
International audienceIn this paper we consider estimation and test of fit for multiple autoregressi...
This article proposes a new diagnostic test for dynamic count models, which is well suited for risk ...
This paper considers the problem of testing for linearity of stationary time series. Portmanteau tes...
Commonly used tests to assess evidence for the absence of autocorrelation in a univariate time serie...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
The asymptotic distribution of a vector of autocorrelations of squared residuals is derived for a wi...
AbstractMultivariate autoregressive models with exogenous variables (VARX) are often used in econome...
This paper presents and discusses a nonparametric test for detecting serial dependence. We consider ...