AbstractThe focus of this study is on estimating the multivariate extreme value distributions associated with a vector of mutually correlated non-stationary Gaussian processes. This involves computing the joint crossing statistics of the vector processes by assuming the crossings to be Poisson counting processes. A mathematical artifice is adopted to take into account the dependencies that exist between the crossings of the processes. The crux in the formulation lies in the evaluation of a four-dimensional integral, which can be computationally expensive. This difficulty is bypassed by using saddlepoint approximation to reduce the dimension of the integral to be numerically computed to just two. The developments are illustrated through a nu...
Multivariate extreme value theory and methods concern the characterization, estimation and extrapola...
Consider a quadratic form of a vector valued differentiable stationary Gaussian process. The crossin...
Extreme values of a stationary, multivariate time series may exhibit dependence across coordinates a...
AbstractThe focus of this study is on estimating the multivariate extreme value distributions associ...
The problem of determining the joint probability distribution of extreme values associated with a ve...
A new model for point processes is developed which assumes that the interarrival times are exponenti...
AbstractA new model for point processes is developed which assumes that the interarrival times are e...
Extreme values of non-linear functions of multivariate Gaussian processes are of considerable intere...
The exact distribution of extremes of a non-gaussian stationary discrete process is obtained and the...
AbstractThe structure of the large values attained by a stationary random process indexed by a one-d...
Summary. Multivariate extreme value theory and methods concern the characterization, estimation and ...
Abstract. Consider n i.i.d. random vectors on R2, with unknown, common distribution function F. Unde...
AbstractThe exact distribution of extremes of a non-gaussian stationary discrete process is obtained...
Max-stable processes allow the spatial dependence of extremes to be modelled and quantified, so they...
In Chapter 1, we give a brief introduction to univariate extreme value theory. We also discuss the k...
Multivariate extreme value theory and methods concern the characterization, estimation and extrapola...
Consider a quadratic form of a vector valued differentiable stationary Gaussian process. The crossin...
Extreme values of a stationary, multivariate time series may exhibit dependence across coordinates a...
AbstractThe focus of this study is on estimating the multivariate extreme value distributions associ...
The problem of determining the joint probability distribution of extreme values associated with a ve...
A new model for point processes is developed which assumes that the interarrival times are exponenti...
AbstractA new model for point processes is developed which assumes that the interarrival times are e...
Extreme values of non-linear functions of multivariate Gaussian processes are of considerable intere...
The exact distribution of extremes of a non-gaussian stationary discrete process is obtained and the...
AbstractThe structure of the large values attained by a stationary random process indexed by a one-d...
Summary. Multivariate extreme value theory and methods concern the characterization, estimation and ...
Abstract. Consider n i.i.d. random vectors on R2, with unknown, common distribution function F. Unde...
AbstractThe exact distribution of extremes of a non-gaussian stationary discrete process is obtained...
Max-stable processes allow the spatial dependence of extremes to be modelled and quantified, so they...
In Chapter 1, we give a brief introduction to univariate extreme value theory. We also discuss the k...
Multivariate extreme value theory and methods concern the characterization, estimation and extrapola...
Consider a quadratic form of a vector valued differentiable stationary Gaussian process. The crossin...
Extreme values of a stationary, multivariate time series may exhibit dependence across coordinates a...