Consider a random sample from a bivariate distribution function F in the max-domain of attraction of an extreme-value distribution function G. This G is characterized by two extreme-value indices and a spectral measure, the latter determining the tail dependence structure of F. A major issue in mul-tivariate extreme-value theory is the estimation of the spectral measure p with respect to the Lp norm. For every p ∈ [1,∞], a nonparametric maxi-mum empirical likelihood estimator is proposed for p. The main novelty is that these estimators are guaranteed to satisfy the moment constraints by which spectral measures are characterized. Asymptotic normality of the es-timators is proved under conditions that allow for tail independence. More-over, t...
Let F and G be multivariate probability distribution functions, each with equal one dimensional marg...
The tail of a bivariate distribution function in the domain of attraction of a bi-variate extreme-va...
Extreme U-statistics arise when the kernel of a U-statistic has a high degree but depends only on it...
Consider a random sample from a bivariate distribution function F in the max-domain of attraction of...
Consider a random sample from a bivariate distribution function F in the max-domain of attraction of...
Let 11 nn be a random sample from a bivariate distri-bution functionF in the domain of max...
Let (X1, Y1), (X2, Y2),…, (Xn, Yn) be a random sample from a bivariate distribution function F which...
AbstractLet (X1, Y1), (X2, Y2),…, (Xn, Yn) be a random sample from a bivariate distribution function...
The traditional approach to multivariate extreme values has been through the multivariate extreme va...
The spectral measure plays a key role in the statistical modeling of multivariate extremes. Estimati...
The spectral measure plays a key role in the statistical modeling of multivariate extremes. Estimati...
The tail of a bivariate distribution function in the domain of attraction of a bivariate extreme-val...
AbstractIn extreme value analysis, staring from Smith (1987) [1], the maximum likelihood procedure i...
The tail of a bivariate distribution function in the domain of attraction of a bivariate extreme val...
AMS 2000 subject classifications: Primary 62G05, 62G30, 62G32; secondary 60G70, 60F05, 60F17, JEL: C...
Let F and G be multivariate probability distribution functions, each with equal one dimensional marg...
The tail of a bivariate distribution function in the domain of attraction of a bi-variate extreme-va...
Extreme U-statistics arise when the kernel of a U-statistic has a high degree but depends only on it...
Consider a random sample from a bivariate distribution function F in the max-domain of attraction of...
Consider a random sample from a bivariate distribution function F in the max-domain of attraction of...
Let 11 nn be a random sample from a bivariate distri-bution functionF in the domain of max...
Let (X1, Y1), (X2, Y2),…, (Xn, Yn) be a random sample from a bivariate distribution function F which...
AbstractLet (X1, Y1), (X2, Y2),…, (Xn, Yn) be a random sample from a bivariate distribution function...
The traditional approach to multivariate extreme values has been through the multivariate extreme va...
The spectral measure plays a key role in the statistical modeling of multivariate extremes. Estimati...
The spectral measure plays a key role in the statistical modeling of multivariate extremes. Estimati...
The tail of a bivariate distribution function in the domain of attraction of a bivariate extreme-val...
AbstractIn extreme value analysis, staring from Smith (1987) [1], the maximum likelihood procedure i...
The tail of a bivariate distribution function in the domain of attraction of a bivariate extreme val...
AMS 2000 subject classifications: Primary 62G05, 62G30, 62G32; secondary 60G70, 60F05, 60F17, JEL: C...
Let F and G be multivariate probability distribution functions, each with equal one dimensional marg...
The tail of a bivariate distribution function in the domain of attraction of a bi-variate extreme-va...
Extreme U-statistics arise when the kernel of a U-statistic has a high degree but depends only on it...