Maxima of independent, non-identically distributed Gaussian vectors

Let , be a triangular array of independent -valued Gaussian random vectors with correlation matrices . We give necessary conditions under which the row-wise maxima converge to some max-stable distribution which generalizes the class of H\"{u}sler-Reiss distributions. In the bivariate case, the conditions will also be sufficient. Using these results, new models for bivariate extremes are derived explicitly. Moreover, we define a new class of stationary, max-stable processes as max-mixtures of Brown-Resnick processes. As an application, we show that these processes realize a large set of extremal correlation functions, a natural dependence measure for max-stable processes. This set includes all functions , where is a completely monotone function and is an arbitrary variogram.
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