Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrelations of squared or absolute observations. In the context of high frequency time series of financial returns, these autocorrelations are often positive and very persistent, although their magnitude is usually very small. Moreover, the sample autocorrelations are severely biased towards zero, specially if the volatility is highly persistent. Consequently, the power of the traditional tests is often very low. In this paper, we propose a new test that takes into account not only the magnitude of the sample autocorrelations but also possible patterns among them. This aditional information makes the test more powerful in situations of empirical i...
One puzzling behavior of asset returns for various frequencies is the often observed positive autoco...
Functional data objects that are derived from high-frequency financial data often exhibit volatility...
We study in this dissertation Generalized Autoregressive Conditionally Heteroskedastic (GARCH) time ...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
Abstract: Traditional tests for conditional heteroscedasticity are based on testing for signicant au...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
Economic theories in time series contexts usually have implications on and only on the conditional m...
Functional data objects derived from high-frequency financial data often exhibit volatility clusteri...
Economic theories in time series contexts usually have implications on and only on the conditional m...
In this paper we propose a new test of conditional heteroskedasticity for time series by introducing...
textabstractWe consider tests for sudden changes in the unconditional volatility of conditionally he...
Functional data objects that are derived from high-frequency financial data often exhibit volatility...
One puzzling behavior of asset returns for various frequencies is the often observed positive autoco...
Functional data objects that are derived from high-frequency financial data often exhibit volatility...
We study in this dissertation Generalized Autoregressive Conditionally Heteroskedastic (GARCH) time ...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
Abstract: Traditional tests for conditional heteroscedasticity are based on testing for signicant au...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
Traditional tests for conditional heteroscedasticity are based on testing for significant autocorrel...
Economic theories in time series contexts usually have implications on and only on the conditional m...
Functional data objects derived from high-frequency financial data often exhibit volatility clusteri...
Economic theories in time series contexts usually have implications on and only on the conditional m...
In this paper we propose a new test of conditional heteroskedasticity for time series by introducing...
textabstractWe consider tests for sudden changes in the unconditional volatility of conditionally he...
Functional data objects that are derived from high-frequency financial data often exhibit volatility...
One puzzling behavior of asset returns for various frequencies is the often observed positive autoco...
Functional data objects that are derived from high-frequency financial data often exhibit volatility...
We study in this dissertation Generalized Autoregressive Conditionally Heteroskedastic (GARCH) time ...