It is well known that the class of strong (Generalized) AutoRegressive Conditional Heteroskedasticity (or GARCH) processes is not closed under contemporaneous aggregation. This paper provides the dynamics followed by the aggregate process when the individual persistence parameters are drawn from the same (unknown) distribution. Assuming heterogeneity across individual parameters, the dynamics of the aggregate volatility involves additional lags that reflect the moments of the distribution of the individual persistence parameters. Then the paper describes a consistent estimator of the aggregate process, based on nonlinear least squares. A simulation study reveals that this aggregation-corrected estimator performs very well under realistic se...
This paper investigates the performance of quasi maximum likelihood (QML) and nonlinear least square...
This paper explores the interactions between cross-sectional aggregation and persistence of volatili...
This paper discusses the effects of temporal aggregation on causality and forecasting in multivariat...
It is well known that the class of strong (Generalized) AutoRegressive Conditional Heteroskedasticit...
It is well known that the class of strong (Generalized) AutoRegressive Conditional Heteroskedasticit...
It is well known that the class of strong (Generalized) AutoRegressive Condi-tional Heteroskedastici...
The paper investigates the properties of a portfolio composed of a large number of assets driven by ...
The paper investigates the properties of a portfolio composed of a large number of assets driven by ...
The paper investigates the properties of a portfolio composed of a large number of assets driven by ...
In this article, the effect of contemporaneous aggregation of heterogeneous generalized autoregressi...
In this paper the effect of contemporaneous aggregation of het-erogeneous GARCH processes as the cro...
Bollerslev’s (1986) standard GARCH(1,1) model has been successful in the literature of volatility mo...
textabstractThis paper investigates the performance of quasi maximum likelihood (QML) and nonlinear ...
This paper investigates the performance of quasi maximum likelihood (QML) and nonlinear least square...
This paper investigates the performance of quasi maximum likelihood (QML) and non-linear least squar...
This paper investigates the performance of quasi maximum likelihood (QML) and nonlinear least square...
This paper explores the interactions between cross-sectional aggregation and persistence of volatili...
This paper discusses the effects of temporal aggregation on causality and forecasting in multivariat...
It is well known that the class of strong (Generalized) AutoRegressive Conditional Heteroskedasticit...
It is well known that the class of strong (Generalized) AutoRegressive Conditional Heteroskedasticit...
It is well known that the class of strong (Generalized) AutoRegressive Condi-tional Heteroskedastici...
The paper investigates the properties of a portfolio composed of a large number of assets driven by ...
The paper investigates the properties of a portfolio composed of a large number of assets driven by ...
The paper investigates the properties of a portfolio composed of a large number of assets driven by ...
In this article, the effect of contemporaneous aggregation of heterogeneous generalized autoregressi...
In this paper the effect of contemporaneous aggregation of het-erogeneous GARCH processes as the cro...
Bollerslev’s (1986) standard GARCH(1,1) model has been successful in the literature of volatility mo...
textabstractThis paper investigates the performance of quasi maximum likelihood (QML) and nonlinear ...
This paper investigates the performance of quasi maximum likelihood (QML) and nonlinear least square...
This paper investigates the performance of quasi maximum likelihood (QML) and non-linear least squar...
This paper investigates the performance of quasi maximum likelihood (QML) and nonlinear least square...
This paper explores the interactions between cross-sectional aggregation and persistence of volatili...
This paper discusses the effects of temporal aggregation on causality and forecasting in multivariat...