AbstractLet X={X(s)}s∈S be an almost sure continuous stochastic process (S compact subset of Rd) in the domain of attraction of some max-stable process, with index function constant over S. We study the tail distribution of ∫SX(s)ds, which turns out to be of Generalized Pareto type with an extra ‘spatial’ parameter (the areal coefficient from Coles and Tawn (1996) [3]). Moreover, we discuss how to estimate the tail probability P(∫SX(s)ds>x) for some high value x, based on independent and identically distributed copies of X. In the course we also give an estimator for the areal coefficient. We prove consistency of the proposed estimators. Our methods are applied to the total rainfall in the North Holland area; i.e. X represents in this case ...
Abstract. Many real-life time series often exhibit clusters of outlying observations that cannot be ...
Abstract: In an insurance context, consider {Xn, n ≥ 1} random claim sizes with common distribution ...
Max-stable processes are increasingly widely used for modelling complex extreme events, but existing...
Max-stable processes arise as the only possible nontrivial limits for maxima of affinely normalized ...
In the field of spatial extremes, stochastic processes with upper semicontinuous (usc) trajectories ...
We prove that when the distribution of a stochastic process in C[0, 1] is in the domain of attractio...
This dissertation consists of results in two distinct areas of probability theory. One is the extrem...
We construct extremal stochastic integrals Re E f(u)M®(du) of a deterministic function f(u) ¸ 0 wit...
Let daily rainfall over the space be represented by a stochastic process, assumed continuous on some...
Aucunhis thesis is a contribution to the statistical modeling of the index of extreme values in th...
AbstractMany real-life time series exhibit clusters of outlying observations that cannot be adequate...
We establish functional central limit theorems for a broad class of dependent, heterogeneous tail ar...
AbstractWe discuss the estimation of the tail index of a heavy-tailed distribution when covariate in...
AbstractIn this article we study the distribution of the maximum of random variables till the corres...
Wetackle the modeling of threshold exceedances in asymptotically independent stochastic processes by...
Abstract. Many real-life time series often exhibit clusters of outlying observations that cannot be ...
Abstract: In an insurance context, consider {Xn, n ≥ 1} random claim sizes with common distribution ...
Max-stable processes are increasingly widely used for modelling complex extreme events, but existing...
Max-stable processes arise as the only possible nontrivial limits for maxima of affinely normalized ...
In the field of spatial extremes, stochastic processes with upper semicontinuous (usc) trajectories ...
We prove that when the distribution of a stochastic process in C[0, 1] is in the domain of attractio...
This dissertation consists of results in two distinct areas of probability theory. One is the extrem...
We construct extremal stochastic integrals Re E f(u)M®(du) of a deterministic function f(u) ¸ 0 wit...
Let daily rainfall over the space be represented by a stochastic process, assumed continuous on some...
Aucunhis thesis is a contribution to the statistical modeling of the index of extreme values in th...
AbstractMany real-life time series exhibit clusters of outlying observations that cannot be adequate...
We establish functional central limit theorems for a broad class of dependent, heterogeneous tail ar...
AbstractWe discuss the estimation of the tail index of a heavy-tailed distribution when covariate in...
AbstractIn this article we study the distribution of the maximum of random variables till the corres...
Wetackle the modeling of threshold exceedances in asymptotically independent stochastic processes by...
Abstract. Many real-life time series often exhibit clusters of outlying observations that cannot be ...
Abstract: In an insurance context, consider {Xn, n ≥ 1} random claim sizes with common distribution ...
Max-stable processes are increasingly widely used for modelling complex extreme events, but existing...