Several models with conditional heterosckedasticity have been studied in financial econometrics, with the simple GARCH(1,1) with Gaussian innovation representing the standard benchmark. There is evidence of asymmetry in some daily data and more flexible models, which take such an asymmetry into account, have become recently popular. Understanding the extremal behaviour of asymmetric processes becomes very important to build proper inference about extremal events. For processes satisfying mild mixing conditions the clustering of extreme values is characterzied by a single key-parameter, known as the extremal index, which represents the average clusters size of values which exceed a high-level threshold. An approach extending results for the ...
Extreme value theory is widely used financial applications such as risk analysis, forecasting and p...
We extend classical extreme value theory to non-identically distributed observations. When the tails...
The extremal index (θ) is the key parameter for extending extreme value theory results from i.i.d. t...
Generalised autoregressive conditional heteroskedastic (GARCH) processes have wide application in fi...
Generalized Autoregressive Conditionally Heteroskedastic (GARCH) processes have become the standard ...
Several methods have been proposed for identifying clusters of extreme values leading to estimators ...
Several methods have been proposed for identifying clusters of ex- treme values leading to estimator...
Generalized autoregressive conditionally heteroskedastic (GARCH) processes are widely used for model...
This thesis investigates the capability of GARCH-family models to capture the tail properties using ...
We consider the extreme value theory for a stationary GARCH process with iid innovations. One of the...
International audienceFor a wide class of stationary time series, extreme value theory provides limi...
Generalized autoregressive conditionally heteroskedastic (GARCH) processes are widely used for model...
Extreme value methods are widely used in financial applications such as risk analysis, forecasting a...
This paper introduces an estimator for the extremal index as the ratio of the number of elements of ...
This paper introduces an estimator for the extremal index as the ratio of the number of elements of ...
Extreme value theory is widely used financial applications such as risk analysis, forecasting and p...
We extend classical extreme value theory to non-identically distributed observations. When the tails...
The extremal index (θ) is the key parameter for extending extreme value theory results from i.i.d. t...
Generalised autoregressive conditional heteroskedastic (GARCH) processes have wide application in fi...
Generalized Autoregressive Conditionally Heteroskedastic (GARCH) processes have become the standard ...
Several methods have been proposed for identifying clusters of extreme values leading to estimators ...
Several methods have been proposed for identifying clusters of ex- treme values leading to estimator...
Generalized autoregressive conditionally heteroskedastic (GARCH) processes are widely used for model...
This thesis investigates the capability of GARCH-family models to capture the tail properties using ...
We consider the extreme value theory for a stationary GARCH process with iid innovations. One of the...
International audienceFor a wide class of stationary time series, extreme value theory provides limi...
Generalized autoregressive conditionally heteroskedastic (GARCH) processes are widely used for model...
Extreme value methods are widely used in financial applications such as risk analysis, forecasting a...
This paper introduces an estimator for the extremal index as the ratio of the number of elements of ...
This paper introduces an estimator for the extremal index as the ratio of the number of elements of ...
Extreme value theory is widely used financial applications such as risk analysis, forecasting and p...
We extend classical extreme value theory to non-identically distributed observations. When the tails...
The extremal index (θ) is the key parameter for extending extreme value theory results from i.i.d. t...