When simultaneously monitoring two possibly dependent, positive risks one is often interested in quantile regions with very small probability p. These extreme quantile regions contain hardly any or no data and therefore statistical inference is difficult. In particular when we want to protect ourselves against a calamity that has not yet occurred, we need to deal with probabilities p < 1/n, with n the sample size. We consider quantile regions of the form {(x, y) ∈ (0, ∞ )2: f(x, y) ≤ β}, where f, the joint density, is decreasing in both coordinates. Such a region has the property that it consists of the less likely points and hence that its complement is as small as possible. Using extreme value theory, we construct a natural, semiparametri...
One of the major aims of one-dimensional extreme-value theory is to estimate quantiles outside the s...
In the present work we study multivariate extreme value theory. Our main focus is on exceedances ove...
This paper suggests using a mixture of parametric and non-parametric methods to construct prediction...
Estimation of extreme quantile regions, spaces in which future extreme events can occur with a given...
Consider the extreme quantile region, induced by the halfspace depth function HD, of the form Q = fx...
We propose a new method for estimating the extreme quantiles for a function of several dependent ran...
We propose a new method for estimating the extreme quantiles for a function of several dependent ran...
We propose a new method for estimating the extreme quantiles for a function of several dependent ran...
This research focuses on performing statistical inference when only a limited amount of information ...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
The tail of a bivariate distribution function in the domain of attraction of a bi-variate extreme-va...
Let T<sub>i</sub>:= [X<sub>i</sub>| <b>X</b>∈ ∂ L(α)], for i=1, ... ,d, where <b>X</b>=(X<sub>1</sub...
This thesis presents results in Extreme ValueStatistics and quantile estimation. A first part includ...
International audienceThe class of quantiles lies at the heart of extreme-value theory and is one of...
This thesis considers estimation of the quantiles of the smallest extreme value distribution, someti...
One of the major aims of one-dimensional extreme-value theory is to estimate quantiles outside the s...
In the present work we study multivariate extreme value theory. Our main focus is on exceedances ove...
This paper suggests using a mixture of parametric and non-parametric methods to construct prediction...
Estimation of extreme quantile regions, spaces in which future extreme events can occur with a given...
Consider the extreme quantile region, induced by the halfspace depth function HD, of the form Q = fx...
We propose a new method for estimating the extreme quantiles for a function of several dependent ran...
We propose a new method for estimating the extreme quantiles for a function of several dependent ran...
We propose a new method for estimating the extreme quantiles for a function of several dependent ran...
This research focuses on performing statistical inference when only a limited amount of information ...
The estimation of extreme conditional quantiles is an important issue in different scientific discip...
The tail of a bivariate distribution function in the domain of attraction of a bi-variate extreme-va...
Let T<sub>i</sub>:= [X<sub>i</sub>| <b>X</b>∈ ∂ L(α)], for i=1, ... ,d, where <b>X</b>=(X<sub>1</sub...
This thesis presents results in Extreme ValueStatistics and quantile estimation. A first part includ...
International audienceThe class of quantiles lies at the heart of extreme-value theory and is one of...
This thesis considers estimation of the quantiles of the smallest extreme value distribution, someti...
One of the major aims of one-dimensional extreme-value theory is to estimate quantiles outside the s...
In the present work we study multivariate extreme value theory. Our main focus is on exceedances ove...
This paper suggests using a mixture of parametric and non-parametric methods to construct prediction...