Multivariate peaks over thresholds modeling based on generalized Pareto distributions has up to now only been used in few and mostly low-dimensional situations. This paper contributes to the theoretical understanding, physically based models, inference tools, and simulation methods needed to support routine use, also in high dimensions. We derive a general model for extreme episodes in data, and show how conditioning the distribution of extreme episodes on threshold exceedance gives three basic representations of the family of generalized Pareto distributions. The first representation is constructed on the real scale of the observations. The second one starts with a model on a standard exponential scale which then is transformed to the real...
Generalized Pareto distributions with positive tail index arise from embedding a Gamma random variab...
Generalized Pareto distributions with positive tail index arise from embedding a Gamma random variab...
Extreme value theory is about the distributions of very large or very small values in a time series...
Multivariate peaks over thresholds modelling based on generalized Pareto distributions has up to now...
Multivariate peaks over thresholds modelling based on generalized Pareto distributions has up to now...
Multivariate peaks over thresholds modelling based on generalized Pareto distributions has up to now...
Multivariate peaks over thresholds modelling based on generalized Pareto distributions has up to now...
Multivariate peaks over thresholds modelling based on generalized Pareto distributions has up to now...
The multivariate generalized Pareto distribution arises as the limit of a normal- ized vector condit...
The multivariate generalized Pareto distribution arises as the limit of a suitably normalized vector...
textabstractWhen assessing the impact of extreme events, it is often not just a single component, bu...
<p>When assessing the impact of extreme events, it is often not just a single component, but the com...
When assessing the impact of extreme events, it is often not just a single component, but the combin...
Published with license by Taylor & Francis. When assessing the impact of extreme events, it is o...
Max-stable processes are increasingly widely used for modelling complex extreme events, but existing...
Generalized Pareto distributions with positive tail index arise from embedding a Gamma random variab...
Generalized Pareto distributions with positive tail index arise from embedding a Gamma random variab...
Extreme value theory is about the distributions of very large or very small values in a time series...
Multivariate peaks over thresholds modelling based on generalized Pareto distributions has up to now...
Multivariate peaks over thresholds modelling based on generalized Pareto distributions has up to now...
Multivariate peaks over thresholds modelling based on generalized Pareto distributions has up to now...
Multivariate peaks over thresholds modelling based on generalized Pareto distributions has up to now...
Multivariate peaks over thresholds modelling based on generalized Pareto distributions has up to now...
The multivariate generalized Pareto distribution arises as the limit of a normal- ized vector condit...
The multivariate generalized Pareto distribution arises as the limit of a suitably normalized vector...
textabstractWhen assessing the impact of extreme events, it is often not just a single component, bu...
<p>When assessing the impact of extreme events, it is often not just a single component, but the com...
When assessing the impact of extreme events, it is often not just a single component, but the combin...
Published with license by Taylor & Francis. When assessing the impact of extreme events, it is o...
Max-stable processes are increasingly widely used for modelling complex extreme events, but existing...
Generalized Pareto distributions with positive tail index arise from embedding a Gamma random variab...
Generalized Pareto distributions with positive tail index arise from embedding a Gamma random variab...
Extreme value theory is about the distributions of very large or very small values in a time series...