This work considers various approaches for modelling multivariate extremal events. First we review theory in the univariate case| the Fisher-Tippett theorem and the generalized Pareto distribution. We proceed with an extension to the multivariate case using the spectral measure and point processes for modelling dependence between components, ending with a review of parametric dependence models and ways to t them to data. We compare these classical methods to a new semi-parametric conditional approach. Finally, we apply the discussed methods in a simulation and on a dataset, compare the results and highlight classes of problems that the various approaches are suitable to
In this note, the representations of extremal Dirichlet and logistic distributions are reviewed and ...
The main approach to inference for multivariate extremes consists in approximating the joint upper t...
Extreme value modeling has been attracting the attention of researchers in diverse areas such as th...
Projection of future extreme events is a major issue in a large number of areas including the enviro...
A number of different dependence scenarios can arise in the theory of multivariate extremes, entaili...
Summary. Multivariate extreme value theory and methods concern the characterization, estimation and ...
Multivariate extreme value theory and methods concern the characterization, estimation and extrapola...
Inference over multivariate tails often requires a number of assumptions which may affect the assess...
Multivariate peaks over thresholds modelling based on generalized Pareto distributions has up to now...
The traditional approach to multivariate extreme values has been through the multivariate extreme va...
The analysis of multiple extreme values aims to describe the stochastic behaviour of observations in...
Generalized Pareto distributions with positive tail index arise from embedding a Gamma random variab...
Multivariate extreme value distributions arise as the limiting joint distribution of normalized comp...
There is an increasing interest to understand the interplay of extreme values over time and across c...
This paper reviews the main probabilistic results on multivariate extremes. Historically, this branc...
In this note, the representations of extremal Dirichlet and logistic distributions are reviewed and ...
The main approach to inference for multivariate extremes consists in approximating the joint upper t...
Extreme value modeling has been attracting the attention of researchers in diverse areas such as th...
Projection of future extreme events is a major issue in a large number of areas including the enviro...
A number of different dependence scenarios can arise in the theory of multivariate extremes, entaili...
Summary. Multivariate extreme value theory and methods concern the characterization, estimation and ...
Multivariate extreme value theory and methods concern the characterization, estimation and extrapola...
Inference over multivariate tails often requires a number of assumptions which may affect the assess...
Multivariate peaks over thresholds modelling based on generalized Pareto distributions has up to now...
The traditional approach to multivariate extreme values has been through the multivariate extreme va...
The analysis of multiple extreme values aims to describe the stochastic behaviour of observations in...
Generalized Pareto distributions with positive tail index arise from embedding a Gamma random variab...
Multivariate extreme value distributions arise as the limiting joint distribution of normalized comp...
There is an increasing interest to understand the interplay of extreme values over time and across c...
This paper reviews the main probabilistic results on multivariate extremes. Historically, this branc...
In this note, the representations of extremal Dirichlet and logistic distributions are reviewed and ...
The main approach to inference for multivariate extremes consists in approximating the joint upper t...
Extreme value modeling has been attracting the attention of researchers in diverse areas such as th...