Tail dependence models for distributions attracted to a max-stable law are
fitted using observations above a high threshold. To cope with spatial,
high-dimensional data, a rank-based M-estimator is proposed relying on
bivariate margins only. A data-driven weight matrix is used to minimize the
asymptotic variance. Empirical process arguments show that the estimator is
consistent and asymptotically normal. Its finite-sample performance is assessed
in simulation experiments involving popular max-stable processes perturbed with
additive noise. An analysis of wind speed data from the Netherlands illustrates
the method.Comment: 25 pages; major revisio