A number of different approaches to study multivariate extremes have been developed. Arguably the most useful and flexible is the theory for the distribution of a vector variable given that one of its components is large. We build on the conditional approach of Heffernan and Tawn (2004) [13] for estimating this type of multivariate extreme property. Specifically we propose additional constraints for, and slight changes in, their model formulation. These changes in the method are aimed at overcoming complications that have been experienced with using the approach in terms of their modelling of negatively associated variables, parameter identifiability problems and drawing conditional inferences which are inconsistent with the marginal distri...
A Markov tree is a probabilistic graphical model for a random vector by which conditional independen...
International audienceWe investigate conditions for the existence of the limiting conditional distri...
The traditional approach to multivariate extreme values has been through the multivariate extreme va...
Analysing the extremes of multi-dimensional data is a difficult task for many reasons, e.g. the wide...
Summary. Multivariate extreme value theory and methods concern the characterization, estimation and ...
Multivariate extreme value theory and methods concern the characterization, estimation and extrapola...
Multivariate extreme value models are used to estimate joint risk in a number of applications, with ...
Discussion of " A conditional approach for multivariate extreme values" by J.E. Heffernan and J.A. T...
Statistical models for extreme values are generally derived from non-degenerate probabilistic limits...
Multivariate extreme value distributions arise as the limiting joint distribution of normalized comp...
Extreme value theory (EVT) is often used to model environmental, financial and internet traffic data...
This work focuses on statistical methods to understand how frequently rare events occur and what the...
Conditionally specified models are often used to model complex multi- variate data. Such models assu...
Published in at http://dx.doi.org/10.1214/12-AOAS554 the Annals of Applied Statistics (http://www.im...
A Markov tree is a probabilistic graphical model for a random vector by which conditional independen...
A Markov tree is a probabilistic graphical model for a random vector by which conditional independen...
International audienceWe investigate conditions for the existence of the limiting conditional distri...
The traditional approach to multivariate extreme values has been through the multivariate extreme va...
Analysing the extremes of multi-dimensional data is a difficult task for many reasons, e.g. the wide...
Summary. Multivariate extreme value theory and methods concern the characterization, estimation and ...
Multivariate extreme value theory and methods concern the characterization, estimation and extrapola...
Multivariate extreme value models are used to estimate joint risk in a number of applications, with ...
Discussion of " A conditional approach for multivariate extreme values" by J.E. Heffernan and J.A. T...
Statistical models for extreme values are generally derived from non-degenerate probabilistic limits...
Multivariate extreme value distributions arise as the limiting joint distribution of normalized comp...
Extreme value theory (EVT) is often used to model environmental, financial and internet traffic data...
This work focuses on statistical methods to understand how frequently rare events occur and what the...
Conditionally specified models are often used to model complex multi- variate data. Such models assu...
Published in at http://dx.doi.org/10.1214/12-AOAS554 the Annals of Applied Statistics (http://www.im...
A Markov tree is a probabilistic graphical model for a random vector by which conditional independen...
A Markov tree is a probabilistic graphical model for a random vector by which conditional independen...
International audienceWe investigate conditions for the existence of the limiting conditional distri...
The traditional approach to multivariate extreme values has been through the multivariate extreme va...