For multivariate distributions in the domain of attraction of a max-stable distribution, the tail copula and the stable tail dependence function are equivalent ways to capture the dependence in the upper tail. The empirical versions of these functions are rank-based estimators whose inflated estimation errors are known to converge weakly to a Gaussian process that is similar in structure to the weak limit of the empirical copula process. We extend this multivariate result to continuous functional data by establishing the asymptotic normality of the estimators of the tail copula, uniformly over all finite subsets of at most D points (D fixed). An application for testing tail copula stationarity is presented. The main tool for deriving the re...
The tail dependence of multivariate distributions is frequently studied via the tool of copulas. Thi...
The empirical copula has proved to be useful in the construction and understanding of many statistic...
Consider n i.i.d. random vectors on R2, with unknown, common distribution function F.Under a sharpen...
For multivariate distributions in the domain of attraction of a max-stable distribution, the tail co...
The replacement of indicator functions by integrated beta kernels in the definition of the empirical...
The replacement of indicator functions by integrated beta kernels in the definition of the empirical...
International audienceThe tail copula is widely used to describe the dependence in the tail of multi...
In the problem of estimating the lower and upper tail copula we propose two bootstrap procedures for...
Stochastic dependence arises in many fields including electrical grid reliability, network/internet ...
International audienceThe concept of copula is a useful tool to model multivariate distributions but...
International audienceThe concept of copula is a useful tool to model multivariate distributions but...
International audienceThe concept of copula is a useful tool to model multivariate distributions but...
Consider a continuous random pair (X, Y) whose dependence is characterized by an extreme-value copul...
Consider a continuous random pair (X, Y ) whose dependence is characterized by an extreme-value copu...
There is an infinite number of parameters in the definition of multivariate maxima of moving maxima ...
The tail dependence of multivariate distributions is frequently studied via the tool of copulas. Thi...
The empirical copula has proved to be useful in the construction and understanding of many statistic...
Consider n i.i.d. random vectors on R2, with unknown, common distribution function F.Under a sharpen...
For multivariate distributions in the domain of attraction of a max-stable distribution, the tail co...
The replacement of indicator functions by integrated beta kernels in the definition of the empirical...
The replacement of indicator functions by integrated beta kernels in the definition of the empirical...
International audienceThe tail copula is widely used to describe the dependence in the tail of multi...
In the problem of estimating the lower and upper tail copula we propose two bootstrap procedures for...
Stochastic dependence arises in many fields including electrical grid reliability, network/internet ...
International audienceThe concept of copula is a useful tool to model multivariate distributions but...
International audienceThe concept of copula is a useful tool to model multivariate distributions but...
International audienceThe concept of copula is a useful tool to model multivariate distributions but...
Consider a continuous random pair (X, Y) whose dependence is characterized by an extreme-value copul...
Consider a continuous random pair (X, Y ) whose dependence is characterized by an extreme-value copu...
There is an infinite number of parameters in the definition of multivariate maxima of moving maxima ...
The tail dependence of multivariate distributions is frequently studied via the tool of copulas. Thi...
The empirical copula has proved to be useful in the construction and understanding of many statistic...
Consider n i.i.d. random vectors on R2, with unknown, common distribution function F.Under a sharpen...